100+ datasets found
  1. d

    Privacy Preserving Distributed Data Mining

    • catalog.data.gov
    • s.cnmilf.com
    Updated Apr 10, 2025
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    Dashlink (2025). Privacy Preserving Distributed Data Mining [Dataset]. https://catalog.data.gov/dataset/privacy-preserving-distributed-data-mining
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    Dataset updated
    Apr 10, 2025
    Dataset provided by
    Dashlink
    Description

    Distributed data mining from privacy-sensitive multi-party data is likely to play an important role in the next generation of integrated vehicle health monitoring systems. For example, consider an airline manufacturer [tex]$\mathcal{C}$[/tex] manufacturing an aircraft model [tex]$A$[/tex] and selling it to five different airline operating companies [tex]$\mathcal{V}_1 \dots \mathcal{V}_5$[/tex]. These aircrafts, during their operation, generate huge amount of data. Mining this data can reveal useful information regarding the health and operability of the aircraft which can be useful for disaster management and prediction of efficient operating regimes. Now if the manufacturer [tex]$\mathcal{C}$[/tex] wants to analyze the performance data collected from different aircrafts of model-type [tex]$A$[/tex] belonging to different airlines then central collection of data for subsequent analysis may not be an option. It should be noted that the result of this analysis may be statistically more significant if the data for aircraft model [tex]$A$[/tex] across all companies were available to [tex]$\mathcal{C}$[/tex]. The potential problems arising out of such a data mining scenario are:

  2. G

    Data Mining Tools Market Research Report 2033

    • growthmarketreports.com
    csv, pdf, pptx
    Updated Aug 4, 2025
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    Growth Market Reports (2025). Data Mining Tools Market Research Report 2033 [Dataset]. https://growthmarketreports.com/report/data-mining-tools-market
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    pdf, csv, pptxAvailable download formats
    Dataset updated
    Aug 4, 2025
    Dataset authored and provided by
    Growth Market Reports
    Time period covered
    2024 - 2032
    Area covered
    Global
    Description

    Data Mining Tools Market Outlook




    According to our latest research, the global Data Mining Tools market size reached USD 1.93 billion in 2024, reflecting robust industry momentum. The market is expected to grow at a CAGR of 12.7% from 2025 to 2033, reaching a projected value of USD 5.69 billion by 2033. This growth is primarily driven by the increasing adoption of advanced analytics across diverse industries, rapid digital transformation, and the necessity for actionable insights from massive data volumes.




    One of the pivotal growth factors propelling the Data Mining Tools market is the exponential rise in data generation, particularly through digital channels, IoT devices, and enterprise applications. Organizations across sectors are leveraging data mining tools to extract meaningful patterns, trends, and correlations from structured and unstructured data. The need for improved decision-making, operational efficiency, and competitive advantage has made data mining an essential component of modern business strategies. Furthermore, advancements in artificial intelligence and machine learning are enhancing the capabilities of these tools, enabling predictive analytics, anomaly detection, and automation of complex analytical tasks, which further fuels market expansion.




    Another significant driver is the growing demand for customer-centric solutions in industries such as retail, BFSI, and healthcare. Data mining tools are increasingly being used for customer relationship management, targeted marketing, fraud detection, and risk management. By analyzing customer behavior and preferences, organizations can personalize their offerings, optimize marketing campaigns, and mitigate risks. The integration of data mining tools with cloud platforms and big data technologies has also simplified deployment and scalability, making these solutions accessible to small and medium-sized enterprises (SMEs) as well as large organizations. This democratization of advanced analytics is creating new growth avenues for vendors and service providers.




    The regulatory landscape and the increasing emphasis on data privacy and security are also shaping the development and adoption of Data Mining Tools. Compliance with frameworks such as GDPR, HIPAA, and CCPA necessitates robust data governance and transparent analytics processes. Vendors are responding by incorporating features like data masking, encryption, and audit trails into their solutions, thereby enhancing trust and adoption among regulated industries. Additionally, the emergence of industry-specific data mining applications, such as fraud detection in BFSI and predictive diagnostics in healthcare, is expanding the addressable market and fostering innovation.




    From a regional perspective, North America currently dominates the Data Mining Tools market owing to the early adoption of advanced analytics, strong presence of leading technology vendors, and high investments in digital transformation. However, the Asia Pacific region is emerging as a lucrative market, driven by rapid industrialization, expansion of IT infrastructure, and growing awareness of data-driven decision-making in countries like China, India, and Japan. Europe, with its focus on data privacy and digital innovation, also represents a significant market share, while Latin America and the Middle East & Africa are witnessing steady growth as organizations in these regions modernize their operations and adopt cloud-based analytics solutions.





    Component Analysis




    The Component segment of the Data Mining Tools market is bifurcated into Software and Services. Software remains the dominant segment, accounting for the majority of the market share in 2024. This dominance is attributed to the continuous evolution of data mining algorithms, the proliferation of user-friendly graphical interfaces, and the integration of advanced analytics capabilities such as machine learning, artificial intelligence, and natural language pro

  3. Table_1_Data Mining Techniques in Analyzing Process Data: A Didactic.pdf

    • frontiersin.figshare.com
    pdf
    Updated Jun 7, 2023
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    Xin Qiao; Hong Jiao (2023). Table_1_Data Mining Techniques in Analyzing Process Data: A Didactic.pdf [Dataset]. http://doi.org/10.3389/fpsyg.2018.02231.s001
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    pdfAvailable download formats
    Dataset updated
    Jun 7, 2023
    Dataset provided by
    Frontiers Mediahttp://www.frontiersin.org/
    Authors
    Xin Qiao; Hong Jiao
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Due to increasing use of technology-enhanced educational assessment, data mining methods have been explored to analyse process data in log files from such assessment. However, most studies were limited to one data mining technique under one specific scenario. The current study demonstrates the usage of four frequently used supervised techniques, including Classification and Regression Trees (CART), gradient boosting, random forest, support vector machine (SVM), and two unsupervised methods, Self-organizing Map (SOM) and k-means, fitted to one assessment data. The USA sample (N = 426) from the 2012 Program for International Student Assessment (PISA) responding to problem-solving items is extracted to demonstrate the methods. After concrete feature generation and feature selection, classifier development procedures are implemented using the illustrated techniques. Results show satisfactory classification accuracy for all the techniques. Suggestions for the selection of classifiers are presented based on the research questions, the interpretability and the simplicity of the classifiers. Interpretations for the results from both supervised and unsupervised learning methods are provided.

  4. m

    Educational Attainment in North Carolina Public Schools: Use of statistical...

    • data.mendeley.com
    Updated Nov 14, 2018
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    Scott Herford (2018). Educational Attainment in North Carolina Public Schools: Use of statistical modeling, data mining techniques, and machine learning algorithms to explore 2014-2017 North Carolina Public School datasets. [Dataset]. http://doi.org/10.17632/6cm9wyd5g5.1
    Explore at:
    Dataset updated
    Nov 14, 2018
    Authors
    Scott Herford
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    The purpose of data mining analysis is always to find patterns of the data using certain kind of techiques such as classification or regression. It is not always feasible to apply classification algorithms directly to dataset. Before doing any work on the data, the data has to be pre-processed and this process normally involves feature selection and dimensionality reduction. We tried to use clustering as a way to reduce the dimension of the data and create new features. Based on our project, after using clustering prior to classification, the performance has not improved much. The reason why it has not improved could be the features we selected to perform clustering are not well suited for it. Because of the nature of the data, classification tasks are going to provide more information to work with in terms of improving knowledge and overall performance metrics. From the dimensionality reduction perspective: It is different from Principle Component Analysis which guarantees finding the best linear transformation that reduces the number of dimensions with a minimum loss of information. Using clusters as a technique of reducing the data dimension will lose a lot of information since clustering techniques are based a metric of 'distance'. At high dimensions euclidean distance loses pretty much all meaning. Therefore using clustering as a "Reducing" dimensionality by mapping data points to cluster numbers is not always good since you may lose almost all the information. From the creating new features perspective: Clustering analysis creates labels based on the patterns of the data, it brings uncertainties into the data. By using clustering prior to classification, the decision on the number of clusters will highly affect the performance of the clustering, then affect the performance of classification. If the part of features we use clustering techniques on is very suited for it, it might increase the overall performance on classification. For example, if the features we use k-means on are numerical and the dimension is small, the overall classification performance may be better. We did not lock in the clustering outputs using a random_state in the effort to see if they were stable. Our assumption was that if the results vary highly from run to run which they definitely did, maybe the data just does not cluster well with the methods selected at all. Basically, the ramification we saw was that our results are not much better than random when applying clustering to the data preprocessing. Finally, it is important to ensure a feedback loop is in place to continuously collect the same data in the same format from which the models were created. This feedback loop can be used to measure the model real world effectiveness and also to continue to revise the models from time to time as things change.

  5. Privacy Preserving Distributed Data Mining - Dataset - NASA Open Data Portal...

    • data.nasa.gov
    Updated Mar 31, 2025
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    nasa.gov (2025). Privacy Preserving Distributed Data Mining - Dataset - NASA Open Data Portal [Dataset]. https://data.nasa.gov/dataset/privacy-preserving-distributed-data-mining
    Explore at:
    Dataset updated
    Mar 31, 2025
    Dataset provided by
    NASAhttp://nasa.gov/
    Description

    Distributed data mining from privacy-sensitive multi-party data is likely to play an important role in the next generation of integrated vehicle health monitoring systems. For example, consider an airline manufacturer [tex]$\mathcal{C}$[/tex] manufacturing an aircraft model [tex]$A$[/tex] and selling it to five different airline operating companies [tex]$\mathcal{V}_1 \dots \mathcal{V}_5$[/tex]. These aircrafts, during their operation, generate huge amount of data. Mining this data can reveal useful information regarding the health and operability of the aircraft which can be useful for disaster management and prediction of efficient operating regimes. Now if the manufacturer [tex]$\mathcal{C}$[/tex] wants to analyze the performance data collected from different aircrafts of model-type [tex]$A$[/tex] belonging to different airlines then central collection of data for subsequent analysis may not be an option. It should be noted that the result of this analysis may be statistically more significant if the data for aircraft model [tex]$A$[/tex] across all companies were available to [tex]$\mathcal{C}$[/tex]. The potential problems arising out of such a data mining scenario are:

  6. Data supporting the Master thesis "Monitoring von Open Data Praktiken -...

    • zenodo.org
    • data.niaid.nih.gov
    • +1more
    zip
    Updated Nov 21, 2024
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    Katharina Zinke; Katharina Zinke (2024). Data supporting the Master thesis "Monitoring von Open Data Praktiken - Herausforderungen beim Auffinden von Datenpublikationen am Beispiel der Publikationen von Forschenden der TU Dresden" [Dataset]. http://doi.org/10.5281/zenodo.14196539
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    zipAvailable download formats
    Dataset updated
    Nov 21, 2024
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Katharina Zinke; Katharina Zinke
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Dresden
    Description

    Data supporting the Master thesis "Monitoring von Open Data Praktiken - Herausforderungen beim Auffinden von Datenpublikationen am Beispiel der Publikationen von Forschenden der TU Dresden" (Monitoring open data practices - challenges in finding data publications using the example of publications by researchers at TU Dresden) - Katharina Zinke, Institut für Bibliotheks- und Informationswissenschaften, Humboldt-Universität Berlin, 2023

    This ZIP-File contains the data the thesis is based on, interim exports of the results and the R script with all pre-processing, data merging and analyses carried out. The documentation of the additional, explorative analysis is also available. The actual PDFs and text files of the scientific papers used are not included as they are published open access.

    The folder structure is shown below with the file names and a brief description of the contents of each file. For details concerning the analyses approach, please refer to the master's thesis (publication following soon).

    ## Data sources

    Folder 01_SourceData/

    - PLOS-Dataset_v2_Mar23.csv (PLOS-OSI dataset)

    - ScopusSearch_ExportResults.csv (export of Scopus search results from Scopus)

    - ScopusSearch_ExportResults.ris (export of Scopus search results from Scopus)

    - Zotero_Export_ScopusSearch.csv (export of the file names and DOIs of the Scopus search results from Zotero)

    ## Automatic classification

    Folder 02_AutomaticClassification/

    - (NOT INCLUDED) PDFs folder (Folder for PDFs of all publications identified by the Scopus search, named AuthorLastName_Year_PublicationTitle_Title)

    - (NOT INCLUDED) PDFs_to_text folder (Folder for all texts extracted from the PDFs by ODDPub, named AuthorLastName_Year_PublicationTitle_Title)

    - PLOS_ScopusSearch_matched.csv (merge of the Scopus search results with the PLOS_OSI dataset for the files contained in both)

    - oddpub_results_wDOIs.csv (results file of the ODDPub classification)

    - PLOS_ODDPub.csv (merge of the results file of the ODDPub classification with the PLOS-OSI dataset for the publications contained in both)

    ## Manual coding

    Folder 03_ManualCheck/

    - CodeSheet_ManualCheck.txt (Code sheet with descriptions of the variables for manual coding)

    - ManualCheck_2023-06-08.csv (Manual coding results file)

    - PLOS_ODDPub_Manual.csv (Merge of the results file of the ODDPub and PLOS-OSI classification with the results file of the manual coding)

    ## Explorative analysis for the discoverability of open data

    Folder04_FurtherAnalyses

    Proof_of_of_Concept_Open_Data_Monitoring.pdf (Description of the explorative analysis of the discoverability of open data publications using the example of a researcher) - in German

    ## R-Script

    Analyses_MA_OpenDataMonitoring.R (R-Script for preparing, merging and analyzing the data and for performing the ODDPub algorithm)

  7. d

    Data from: A Generic Local Algorithm for Mining Data Streams in Large...

    • catalog.data.gov
    • datasets.ai
    • +2more
    Updated Apr 10, 2025
    + more versions
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    Dashlink (2025). A Generic Local Algorithm for Mining Data Streams in Large Distributed Systems [Dataset]. https://catalog.data.gov/dataset/a-generic-local-algorithm-for-mining-data-streams-in-large-distributed-systems
    Explore at:
    Dataset updated
    Apr 10, 2025
    Dataset provided by
    Dashlink
    Description

    In a large network of computers or wireless sensors, each of the components (henceforth, peers) has some data about the global state of the system. Much of the system's functionality such as message routing, information retrieval and load sharing relies on modeling the global state. We refer to the outcome of the function (e.g., the load experienced by each peer) as the emph{model} of the system. Since the state of the system is constantly changing, it is necessary to keep the models up-to-date. Computing global data mining models e.g. decision trees, k-means clustering in large distributed systems may be very costly due to the scale of the system and due to communication cost, which may be high. The cost further increases in a dynamic scenario when the data changes rapidly. In this paper we describe a two step approach for dealing with these costs. First, we describe a highly efficient emph{local} algorithm which can be used to monitor a wide class of data mining models. Then, we use this algorithm as a feedback loop for the monitoring of complex functions of the data such as its k-means clustering. The theoretical claims are corroborated with a thorough experimental analysis.

  8. Orange dataset table

    • figshare.com
    xlsx
    Updated Mar 4, 2022
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    Rui Simões (2022). Orange dataset table [Dataset]. http://doi.org/10.6084/m9.figshare.19146410.v1
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    xlsxAvailable download formats
    Dataset updated
    Mar 4, 2022
    Dataset provided by
    Figsharehttp://figshare.com/
    figshare
    Authors
    Rui Simões
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    The complete dataset used in the analysis comprises 36 samples, each described by 11 numeric features and 1 target. The attributes considered were caspase 3/7 activity, Mitotracker red CMXRos area and intensity (3 h and 24 h incubations with both compounds), Mitosox oxidation (3 h incubation with the referred compounds) and oxidation rate, DCFDA fluorescence (3 h and 24 h incubations with either compound) and oxidation rate, and DQ BSA hydrolysis. The target of each instance corresponds to one of the 9 possible classes (4 samples per class): Control, 6.25, 12.5, 25 and 50 µM for 6-OHDA and 0.03, 0.06, 0.125 and 0.25 µM for rotenone. The dataset is balanced, it does not contain any missing values and data was standardized across features. The small number of samples prevented a full and strong statistical analysis of the results. Nevertheless, it allowed the identification of relevant hidden patterns and trends.

    Exploratory data analysis, information gain, hierarchical clustering, and supervised predictive modeling were performed using Orange Data Mining version 3.25.1 [41]. Hierarchical clustering was performed using the Euclidean distance metric and weighted linkage. Cluster maps were plotted to relate the features with higher mutual information (in rows) with instances (in columns), with the color of each cell representing the normalized level of a particular feature in a specific instance. The information is grouped both in rows and in columns by a two-way hierarchical clustering method using the Euclidean distances and average linkage. Stratified cross-validation was used to train the supervised decision tree. A set of preliminary empirical experiments were performed to choose the best parameters for each algorithm, and we verified that, within moderate variations, there were no significant changes in the outcome. The following settings were adopted for the decision tree algorithm: minimum number of samples in leaves: 2; minimum number of samples required to split an internal node: 5; stop splitting when majority reaches: 95%; criterion: gain ratio. The performance of the supervised model was assessed using accuracy, precision, recall, F-measure and area under the ROC curve (AUC) metrics.

  9. Data Mining Project - Boston

    • kaggle.com
    zip
    Updated Nov 25, 2019
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    SophieLiu (2019). Data Mining Project - Boston [Dataset]. https://www.kaggle.com/sliu65/data-mining-project-boston
    Explore at:
    zip(59313797 bytes)Available download formats
    Dataset updated
    Nov 25, 2019
    Authors
    SophieLiu
    Area covered
    Boston
    Description

    Context

    To make this a seamless process, I cleaned the data and delete many variables that I thought were not important to our dataset. I then uploaded all of those files to Kaggle for each of you to download. The rideshare_data has both lyft and uber but it is still a cleaned version from the dataset we downloaded from Kaggle.

    Use of Data Files

    You can easily subset the data into the car types that you will be modeling by first loading the csv into R, here is the code for how you do this:

    This loads the file into R

    df<-read.csv('uber.csv')

    The next codes is to subset the data into specific car types. The example below only has Uber 'Black' car types.

    df_black<-subset(uber_df, uber_df$name == 'Black')

    This next portion of code will be to load it into R. First, we must write this dataframe into a csv file on our computer in order to load it into R.

    write.csv(df_black, "nameofthefileyouwanttosaveas.csv")

    The file will appear in you working directory. If you are not familiar with your working directory. Run this code:

    getwd()

    The output will be the file path to your working directory. You will find the file you just created in that folder.

    Inspiration

    Your data will be in front of the world's largest data science community. What questions do you want to see answered?

  10. m

    Arab Computational Propaganda on X (Twitter)

    • data.mendeley.com
    Updated Oct 2, 2023
    + more versions
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    Bodor Almotairy (2023). Arab Computational Propaganda on X (Twitter) [Dataset]. http://doi.org/10.17632/58mttpbc7x.3
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    Dataset updated
    Oct 2, 2023
    Authors
    Bodor Almotairy
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    The database includes three datasets. All of them were extracted from a dataset published by X (Twitter Transparency Websites) that includes tweets from malicious accounts trying to manipulate public opinion in the Kingdom of Saudi Arabia. Although the propagandist tweets were published by malicious accounts, as X (Twitter) stated, the tweets at their level were not classified as propaganda or not. Propagandists usually mix propaganda and non-propaganda tweets in an attempt to hide their identities. Therefore, it was necessary to classify their tweets as propaganda or not, based on the propaganda technique used. Since the datasets are very large, we annotated a sample of 2,100 tweets. The datasets are made up of 16,355,558 tweets from propagandist users focused on sports and banking topics.

  11. Market Basket Analysis

    • kaggle.com
    zip
    Updated Dec 9, 2021
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    Aslan Ahmedov (2021). Market Basket Analysis [Dataset]. https://www.kaggle.com/datasets/aslanahmedov/market-basket-analysis
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    zip(23875170 bytes)Available download formats
    Dataset updated
    Dec 9, 2021
    Authors
    Aslan Ahmedov
    Description

    Market Basket Analysis

    Market basket analysis with Apriori algorithm

    The retailer wants to target customers with suggestions on itemset that a customer is most likely to purchase .I was given dataset contains data of a retailer; the transaction data provides data around all the transactions that have happened over a period of time. Retailer will use result to grove in his industry and provide for customer suggestions on itemset, we be able increase customer engagement and improve customer experience and identify customer behavior. I will solve this problem with use Association Rules type of unsupervised learning technique that checks for the dependency of one data item on another data item.

    Introduction

    Association Rule is most used when you are planning to build association in different objects in a set. It works when you are planning to find frequent patterns in a transaction database. It can tell you what items do customers frequently buy together and it allows retailer to identify relationships between the items.

    An Example of Association Rules

    Assume there are 100 customers, 10 of them bought Computer Mouth, 9 bought Mat for Mouse and 8 bought both of them. - bought Computer Mouth => bought Mat for Mouse - support = P(Mouth & Mat) = 8/100 = 0.08 - confidence = support/P(Mat for Mouse) = 0.08/0.09 = 0.89 - lift = confidence/P(Computer Mouth) = 0.89/0.10 = 8.9 This just simple example. In practice, a rule needs the support of several hundred transactions, before it can be considered statistically significant, and datasets often contain thousands or millions of transactions.

    Strategy

    • Data Import
    • Data Understanding and Exploration
    • Transformation of the data – so that is ready to be consumed by the association rules algorithm
    • Running association rules
    • Exploring the rules generated
    • Filtering the generated rules
    • Visualization of Rule

    Dataset Description

    • File name: Assignment-1_Data
    • List name: retaildata
    • File format: . xlsx
    • Number of Row: 522065
    • Number of Attributes: 7

      • BillNo: 6-digit number assigned to each transaction. Nominal.
      • Itemname: Product name. Nominal.
      • Quantity: The quantities of each product per transaction. Numeric.
      • Date: The day and time when each transaction was generated. Numeric.
      • Price: Product price. Numeric.
      • CustomerID: 5-digit number assigned to each customer. Nominal.
      • Country: Name of the country where each customer resides. Nominal.

    imagehttps://user-images.githubusercontent.com/91852182/145270162-fc53e5a3-4ad1-4d06-b0e0-228aabcf6b70.png">

    Libraries in R

    First, we need to load required libraries. Shortly I describe all libraries.

    • arules - Provides the infrastructure for representing, manipulating and analyzing transaction data and patterns (frequent itemsets and association rules).
    • arulesViz - Extends package 'arules' with various visualization. techniques for association rules and item-sets. The package also includes several interactive visualizations for rule exploration.
    • tidyverse - The tidyverse is an opinionated collection of R packages designed for data science.
    • readxl - Read Excel Files in R.
    • plyr - Tools for Splitting, Applying and Combining Data.
    • ggplot2 - A system for 'declaratively' creating graphics, based on "The Grammar of Graphics". You provide the data, tell 'ggplot2' how to map variables to aesthetics, what graphical primitives to use, and it takes care of the details.
    • knitr - Dynamic Report generation in R.
    • magrittr- Provides a mechanism for chaining commands with a new forward-pipe operator, %>%. This operator will forward a value, or the result of an expression, into the next function call/expression. There is flexible support for the type of right-hand side expressions.
    • dplyr - A fast, consistent tool for working with data frame like objects, both in memory and out of memory.
    • tidyverse - This package is designed to make it easy to install and load multiple 'tidyverse' packages in a single step.

    imagehttps://user-images.githubusercontent.com/91852182/145270210-49c8e1aa-9753-431b-a8d5-99601bc76cb5.png">

    Data Pre-processing

    Next, we need to upload Assignment-1_Data. xlsx to R to read the dataset.Now we can see our data in R.

    imagehttps://user-images.githubusercontent.com/91852182/145270229-514f0983-3bbb-4cd3-be64-980e92656a02.png"> imagehttps://user-images.githubusercontent.com/91852182/145270251-6f6f6472-8817-435c-a995-9bc4bfef10d1.png">

    After we will clear our data frame, will remove missing values.

    imagehttps://user-images.githubusercontent.com/91852182/145270286-05854e1a-2b6c-490e-ab30-9e99e731eacb.png">

    To apply Association Rule mining, we need to convert dataframe into transaction data to make all items that are bought together in one invoice will be in ...

  12. Data Science Platform Market Analysis, Size, and Forecast 2025-2029: North...

    • technavio.com
    pdf
    Updated Feb 8, 2025
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    Technavio (2025). Data Science Platform Market Analysis, Size, and Forecast 2025-2029: North America (US and Canada), Europe (France, Germany, UK), APAC (China, India, Japan), South America (Brazil), and Middle East and Africa (UAE) [Dataset]. https://www.technavio.com/report/data-science-platform-market-industry-analysis
    Explore at:
    pdfAvailable download formats
    Dataset updated
    Feb 8, 2025
    Dataset provided by
    TechNavio
    Authors
    Technavio
    License

    https://www.technavio.com/content/privacy-noticehttps://www.technavio.com/content/privacy-notice

    Time period covered
    2025 - 2029
    Area covered
    United States
    Description

    Snapshot img

    Data Science Platform Market Size 2025-2029

    The data science platform market size is valued to increase USD 763.9 million, at a CAGR of 40.2% from 2024 to 2029. Integration of AI and ML technologies with data science platforms will drive the data science platform market.

    Major Market Trends & Insights

    North America dominated the market and accounted for a 48% growth during the forecast period.
    By Deployment - On-premises segment was valued at USD 38.70 million in 2023
    By Component - Platform segment accounted for the largest market revenue share in 2023
    

    Market Size & Forecast

    Market Opportunities: USD 1.00 million
    Market Future Opportunities: USD 763.90 million
    CAGR : 40.2%
    North America: Largest market in 2023
    

    Market Summary

    The market represents a dynamic and continually evolving landscape, underpinned by advancements in core technologies and applications. Key technologies, such as machine learning and artificial intelligence, are increasingly integrated into data science platforms to enhance predictive analytics and automate data processing. Additionally, the emergence of containerization and microservices in data science platforms enables greater flexibility and scalability. However, the market also faces challenges, including data privacy and security risks, which necessitate robust compliance with regulations.
    According to recent estimates, the market is expected to account for over 30% of the overall big data analytics market by 2025, underscoring its growing importance in the data-driven business landscape.
    

    What will be the Size of the Data Science Platform Market during the forecast period?

    Get Key Insights on Market Forecast (PDF) Request Free Sample

    How is the Data Science Platform Market Segmented and what are the key trends of market segmentation?

    The data science platform industry research report provides comprehensive data (region-wise segment analysis), with forecasts and estimates in 'USD million' for the period 2025-2029, as well as historical data from 2019-2023 for the following segments.

    Deployment
    
      On-premises
      Cloud
    
    
    Component
    
      Platform
      Services
    
    
    End-user
    
      BFSI
      Retail and e-commerce
      Manufacturing
      Media and entertainment
      Others
    
    
    Sector
    
      Large enterprises
      SMEs
    
    
    Application
    
      Data Preparation
      Data Visualization
      Machine Learning
      Predictive Analytics
      Data Governance
      Others
    
    
    Geography
    
      North America
    
        US
        Canada
    
    
      Europe
    
        France
        Germany
        UK
    
    
      Middle East and Africa
    
        UAE
    
    
      APAC
    
        China
        India
        Japan
    
    
      South America
    
        Brazil
    
    
      Rest of World (ROW)
    

    By Deployment Insights

    The on-premises segment is estimated to witness significant growth during the forecast period.

    In the dynamic and evolving the market, big data processing is a key focus, enabling advanced model accuracy metrics through various data mining methods. Distributed computing and algorithm optimization are integral components, ensuring efficient handling of large datasets. Data governance policies are crucial for managing data security protocols and ensuring data lineage tracking. Software development kits, model versioning, and anomaly detection systems facilitate seamless development, deployment, and monitoring of predictive modeling techniques, including machine learning algorithms, regression analysis, and statistical modeling. Real-time data streaming and parallelized algorithms enable real-time insights, while predictive modeling techniques and machine learning algorithms drive business intelligence and decision-making.

    Cloud computing infrastructure, data visualization tools, high-performance computing, and database management systems support scalable data solutions and efficient data warehousing. ETL processes and data integration pipelines ensure data quality assessment and feature engineering techniques. Clustering techniques and natural language processing are essential for advanced data analysis. The market is witnessing significant growth, with adoption increasing by 18.7% in the past year, and industry experts anticipate a further expansion of 21.6% in the upcoming period. Companies across various sectors are recognizing the potential of data science platforms, leading to a surge in demand for scalable, secure, and efficient solutions.

    API integration services and deep learning frameworks are gaining traction, offering advanced capabilities and seamless integration with existing systems. Data security protocols and model explainability methods are becoming increasingly important, ensuring transparency and trust in data-driven decision-making. The market is expected to continue unfolding, with ongoing advancements in technology and evolving business needs shaping its future trajectory.

    Request Free Sample

    The On-premises segment was valued at USD 38.70 million in 2019 and showed

  13. d

    Data from: Mining Distance-Based Outliers in Near Linear Time

    • catalog.data.gov
    • datasets.ai
    Updated Apr 11, 2025
    + more versions
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    Dashlink (2025). Mining Distance-Based Outliers in Near Linear Time [Dataset]. https://catalog.data.gov/dataset/mining-distance-based-outliers-in-near-linear-time
    Explore at:
    Dataset updated
    Apr 11, 2025
    Dataset provided by
    Dashlink
    Description

    Full title: Mining Distance-Based Outliers in Near Linear Time with Randomization and a Simple Pruning Rule Abstract: Defining outliers by their distance to neighboring examples is a popular approach to finding unusual examples in a data set. Recently, much work has been conducted with the goal of finding fast algorithms for this task. We show that a simple nested loop algorithm that in the worst case is quadratic can give near linear time performance when the data is in random order and a simple pruning rule is used. We test our algorithm on real high-dimensional data sets with millions of examples and show that the near linear scaling holds over several orders of magnitude. Our average case analysis suggests that much of the efficiency is because the time to process non-outliers, which are the majority of examples, does not depend on the size of the data set.

  14. l

    LSC (Leicester Scientific Corpus)

    • figshare.le.ac.uk
    Updated Apr 15, 2020
    + more versions
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    Neslihan Suzen (2020). LSC (Leicester Scientific Corpus) [Dataset]. http://doi.org/10.25392/leicester.data.9449639.v2
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    Dataset updated
    Apr 15, 2020
    Dataset provided by
    University of Leicester
    Authors
    Neslihan Suzen
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Leicester
    Description

    The LSC (Leicester Scientific Corpus)

    April 2020 by Neslihan Suzen, PhD student at the University of Leicester (ns433@leicester.ac.uk) Supervised by Prof Alexander Gorban and Dr Evgeny MirkesThe data are extracted from the Web of Science [1]. You may not copy or distribute these data in whole or in part without the written consent of Clarivate Analytics.[Version 2] A further cleaning is applied in Data Processing for LSC Abstracts in Version 1*. Details of cleaning procedure are explained in Step 6.* Suzen, Neslihan (2019): LSC (Leicester Scientific Corpus). figshare. Dataset. https://doi.org/10.25392/leicester.data.9449639.v1.Getting StartedThis text provides the information on the LSC (Leicester Scientific Corpus) and pre-processing steps on abstracts, and describes the structure of files to organise the corpus. This corpus is created to be used in future work on the quantification of the meaning of research texts and make it available for use in Natural Language Processing projects.LSC is a collection of abstracts of articles and proceeding papers published in 2014, and indexed by the Web of Science (WoS) database [1]. The corpus contains only documents in English. Each document in the corpus contains the following parts:1. Authors: The list of authors of the paper2. Title: The title of the paper 3. Abstract: The abstract of the paper 4. Categories: One or more category from the list of categories [2]. Full list of categories is presented in file ‘List_of _Categories.txt’. 5. Research Areas: One or more research area from the list of research areas [3]. Full list of research areas is presented in file ‘List_of_Research_Areas.txt’. 6. Total Times cited: The number of times the paper was cited by other items from all databases within Web of Science platform [4] 7. Times cited in Core Collection: The total number of times the paper was cited by other papers within the WoS Core Collection [4]The corpus was collected in July 2018 online and contains the number of citations from publication date to July 2018. We describe a document as the collection of information (about a paper) listed above. The total number of documents in LSC is 1,673,350.Data ProcessingStep 1: Downloading of the Data Online

    The dataset is collected manually by exporting documents as Tab-delimitated files online. All documents are available online.Step 2: Importing the Dataset to R

    The LSC was collected as TXT files. All documents are extracted to R.Step 3: Cleaning the Data from Documents with Empty Abstract or without CategoryAs our research is based on the analysis of abstracts and categories, all documents with empty abstracts and documents without categories are removed.Step 4: Identification and Correction of Concatenate Words in AbstractsEspecially medicine-related publications use ‘structured abstracts’. Such type of abstracts are divided into sections with distinct headings such as introduction, aim, objective, method, result, conclusion etc. Used tool for extracting abstracts leads concatenate words of section headings with the first word of the section. For instance, we observe words such as ConclusionHigher and ConclusionsRT etc. The detection and identification of such words is done by sampling of medicine-related publications with human intervention. Detected concatenate words are split into two words. For instance, the word ‘ConclusionHigher’ is split into ‘Conclusion’ and ‘Higher’.The section headings in such abstracts are listed below:

    Background Method(s) Design Theoretical Measurement(s) Location Aim(s) Methodology Process Abstract Population Approach Objective(s) Purpose(s) Subject(s) Introduction Implication(s) Patient(s) Procedure(s) Hypothesis Measure(s) Setting(s) Limitation(s) Discussion Conclusion(s) Result(s) Finding(s) Material (s) Rationale(s) Implications for health and nursing policyStep 5: Extracting (Sub-setting) the Data Based on Lengths of AbstractsAfter correction, the lengths of abstracts are calculated. ‘Length’ indicates the total number of words in the text, calculated by the same rule as for Microsoft Word ‘word count’ [5].According to APA style manual [6], an abstract should contain between 150 to 250 words. In LSC, we decided to limit length of abstracts from 30 to 500 words in order to study documents with abstracts of typical length ranges and to avoid the effect of the length to the analysis.

    Step 6: [Version 2] Cleaning Copyright Notices, Permission polices, Journal Names and Conference Names from LSC Abstracts in Version 1Publications can include a footer of copyright notice, permission policy, journal name, licence, author’s right or conference name below the text of abstract by conferences and journals. Used tool for extracting and processing abstracts in WoS database leads to attached such footers to the text. For example, our casual observation yields that copyright notices such as ‘Published by Elsevier ltd.’ is placed in many texts. To avoid abnormal appearances of words in further analysis of words such as bias in frequency calculation, we performed a cleaning procedure on such sentences and phrases in abstracts of LSC version 1. We removed copyright notices, names of conferences, names of journals, authors’ rights, licenses and permission policies identified by sampling of abstracts.Step 7: [Version 2] Re-extracting (Sub-setting) the Data Based on Lengths of AbstractsThe cleaning procedure described in previous step leaded to some abstracts having less than our minimum length criteria (30 words). 474 texts were removed.Step 8: Saving the Dataset into CSV FormatDocuments are saved into 34 CSV files. In CSV files, the information is organised with one record on each line and parts of abstract, title, list of authors, list of categories, list of research areas, and times cited is recorded in fields.To access the LSC for research purposes, please email to ns433@le.ac.uk.References[1]Web of Science. (15 July). Available: https://apps.webofknowledge.com/ [2]WoS Subject Categories. Available: https://images.webofknowledge.com/WOKRS56B5/help/WOS/hp_subject_category_terms_tasca.html [3]Research Areas in WoS. Available: https://images.webofknowledge.com/images/help/WOS/hp_research_areas_easca.html [4]Times Cited in WoS Core Collection. (15 July). Available: https://support.clarivate.com/ScientificandAcademicResearch/s/article/Web-of-Science-Times-Cited-accessibility-and-variation?language=en_US [5]Word Count. Available: https://support.office.com/en-us/article/show-word-count-3c9e6a11-a04d-43b4-977c-563a0e0d5da3 [6]A. P. Association, Publication manual. American Psychological Association Washington, DC, 1983.

  15. Beginner Data Mining Datasets

    • kaggle.com
    zip
    Updated May 28, 2022
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    verdecali (2022). Beginner Data Mining Datasets [Dataset]. https://www.kaggle.com/datasets/verdecali/beginner-data-mining-datasets
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    zip(1672021 bytes)Available download formats
    Dataset updated
    May 28, 2022
    Authors
    verdecali
    Description

    These are artificially made beginner data mining datasets for learning purposes.

    Case study:

    • FEELS LIKE HOME is an interior design company, which has about 100 000 registered customers and provide services for more than 200 000 clients annually.
    • The range of the products can be divided in 5 major classes: Decor accessories, Furniture, Textiles, Lighting and Art with an option to purchase Limited Edition versions for an extra charge. These goods can be distributed by 3 channels: Physical stores, yearly catalogs and the companies’ website.
    • FEELS LIKE HOME has been doing a great job during recent years, achieving decent profits and revenues, but the future remains volatile. In order to solve the problem of instability the company is planning to launch new marketing program, especially to improve the accuracy of marketing campaigns.

    The aim of FeelsLikeHome_Campaign dataset is to create project is in which you build a predictive model (using a sample of 2500 clients’ data) forecasting the highest profit from the next marketing campaign, which will indicate the customers who will be the most likely to accept the offer.

    The aim of FeelsLikeHome_Cluster dataset is to create project in which you split company’s customer base on homogenous clusters (using 5000 clients’ data) and propose draft marketing strategies for these groups based on customer behavior and information about their profile.

    FeelsLikeHome_Score dataset can be used to calculate total profit from marketing campaign and for producing a list of sorted customers by the probability of the dependent variable in predictive model problem.

  16. G

    Data Mining Software Market Research Report 2033

    • growthmarketreports.com
    csv, pdf, pptx
    Updated Aug 22, 2025
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    Growth Market Reports (2025). Data Mining Software Market Research Report 2033 [Dataset]. https://growthmarketreports.com/report/data-mining-software-market
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    csv, pdf, pptxAvailable download formats
    Dataset updated
    Aug 22, 2025
    Dataset authored and provided by
    Growth Market Reports
    Time period covered
    2024 - 2032
    Area covered
    Global
    Description

    Data Mining Software Market Outlook



    According to our latest research, the global Data Mining Software market size in 2024 stands at USD 12.7 billion. This market is experiencing robust expansion, driven by the growing demand for actionable insights across industries, and is expected to reach USD 38.1 billion by 2033, registering a remarkable CAGR of 13.1% during the forecast period. The proliferation of big data, increasing adoption of artificial intelligence, and the need for advanced analytics are the primary growth factors propelling the market forward.




    The accelerating digitization across sectors is a key factor fueling the growth of the Data Mining Software market. Organizations are generating and collecting vast amounts of data at unprecedented rates, requiring sophisticated tools to extract meaningful patterns and actionable intelligence. The rise of Internet of Things (IoT) devices, social media platforms, and connected infrastructure has further intensified the need for robust data mining solutions. Businesses are leveraging data mining software to enhance decision-making, optimize operations, and gain a competitive edge. The integration of machine learning and artificial intelligence algorithms into data mining tools is enabling organizations to automate complex analytical tasks, uncover hidden trends, and predict future outcomes with greater accuracy. As enterprises continue to recognize the value of data-driven strategies, the demand for advanced data mining software is poised for sustained growth.




    Another significant factor contributing to the market’s expansion is the increasing regulatory pressure on data management and security. Regulatory frameworks such as GDPR, HIPAA, and CCPA are compelling organizations to adopt comprehensive data management practices, which include advanced data mining software for compliance monitoring and risk assessment. These regulations are driving investments in software that can efficiently process, analyze, and secure large data sets while ensuring transparency and accountability. Additionally, the surge in cyber threats and data breaches has heightened the importance of robust analytics solutions for anomaly detection, fraud prevention, and real-time threat intelligence. As a result, sectors such as BFSI, healthcare, and government are prioritizing the deployment of data mining solutions to safeguard sensitive information and maintain regulatory compliance.




    The growing emphasis on customer-centric strategies is also playing a pivotal role in the expansion of the Data Mining Software market. Organizations across retail, telecommunications, and financial services are utilizing data mining tools to personalize customer experiences, enhance marketing campaigns, and improve customer retention rates. By analyzing customer behavior, preferences, and feedback, businesses can tailor their offerings and communication strategies to meet evolving consumer demands. The ability to derive granular insights from vast customer data sets enables companies to innovate rapidly and stay ahead of market trends. Furthermore, the integration of data mining with customer relationship management (CRM) and enterprise resource planning (ERP) systems is streamlining business processes and fostering a culture of data-driven decision-making.




    From a regional perspective, North America currently dominates the Data Mining Software market, supported by a mature technological infrastructure, high adoption of cloud-based analytics, and a strong presence of leading software vendors. Europe follows closely, driven by stringent data privacy regulations and increasing investments in digital transformation initiatives. The Asia Pacific region is emerging as a high-growth market, fueled by rapid industrialization, expanding IT sectors, and the proliferation of digital services across economies such as China, India, and Japan. Latin America and the Middle East & Africa are also witnessing increasing adoption, particularly in sectors like banking, telecommunications, and government, as organizations seek to harness the power of data for strategic growth.





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  17. Data from: MusicOSet: An Enhanced Open Dataset for Music Data Mining

    • zenodo.org
    • data.niaid.nih.gov
    • +1more
    bin, zip
    Updated Jun 7, 2021
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    Mariana O. Silva; Mariana O. Silva; Laís Mota; Mirella M. Moro; Mirella M. Moro; Laís Mota (2021). MusicOSet: An Enhanced Open Dataset for Music Data Mining [Dataset]. http://doi.org/10.5281/zenodo.4904639
    Explore at:
    zip, binAvailable download formats
    Dataset updated
    Jun 7, 2021
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Mariana O. Silva; Mariana O. Silva; Laís Mota; Mirella M. Moro; Mirella M. Moro; Laís Mota
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    MusicOSet is an open and enhanced dataset of musical elements (artists, songs and albums) based on musical popularity classification. Provides a directly accessible collection of data suitable for numerous tasks in music data mining (e.g., data visualization, classification, clustering, similarity search, MIR, HSS and so forth). To create MusicOSet, the potential information sources were divided into three main categories: music popularity sources, metadata sources, and acoustic and lyrical features sources. Data from all three categories were initially collected between January and May 2019. Nevertheless, the update and enhancement of the data happened in June 2019.

    The attractive features of MusicOSet include:

    • Integration and centralization of different musical data sources
    • Calculation of popularity scores and classification of hits and non-hits musical elements, varying from 1962 to 2018
    • Enriched metadata for music, artists, and albums from the US popular music industry
    • Availability of acoustic and lyrical resources
    • Unrestricted access in two formats: SQL database and compressed .csv files
    |    Data    | # Records |
    |:-----------------:|:---------:|
    | Songs       | 20,405  |
    | Artists      | 11,518  |
    | Albums      | 26,522  |
    | Lyrics      | 19,664  |
    | Acoustic Features | 20,405  |
    | Genres      | 1,561   |
  18. c

    Global Data Mining Software Market Report 2025 Edition, Market Size, Share,...

    • cognitivemarketresearch.com
    pdf,excel,csv,ppt
    Updated Jun 2, 2025
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    Cognitive Market Research (2025). Global Data Mining Software Market Report 2025 Edition, Market Size, Share, CAGR, Forecast, Revenue [Dataset]. https://www.cognitivemarketresearch.com/data-mining-software-market-report
    Explore at:
    pdf,excel,csv,pptAvailable download formats
    Dataset updated
    Jun 2, 2025
    Dataset authored and provided by
    Cognitive Market Research
    License

    https://www.cognitivemarketresearch.com/privacy-policyhttps://www.cognitivemarketresearch.com/privacy-policy

    Time period covered
    2021 - 2033
    Area covered
    Global
    Description

    According to Cognitive Market Research, the global Data Mining Software market size will be USD XX million in 2025. It will expand at a compound annual growth rate (CAGR) of XX% from 2025 to 2031.

    North America held the major market share for more than XX% of the global revenue with a market size of USD XX million in 2025 and will grow at a CAGR of XX% from 2025 to 2031. Europe accounted for a market share of over XX% of the global revenue with a market size of USD XX million in 2025 and will grow at a CAGR of XX% from 2025 to 2031. Asia Pacific held a market share of around XX% of the global revenue with a market size of USD XX million in 2025 and will grow at a CAGR of XX% from 2025 to 2031. Latin America had a market share of more than XX% of the global revenue with a market size of USD XX million in 2025 and will grow at a CAGR of XX% from 2025 to 2031. Middle East and Africa had a market share of around XX% of the global revenue and was estimated at a market size of USD XX million in 2025 and will grow at a CAGR of XX% from 2025 to 2031. KEY DRIVERS

    Increasing Focus on Customer Satisfaction to Drive Data Mining Software Market Growth

    In today’s hyper-competitive and digitally connected marketplace, customer satisfaction has emerged as a critical factor for business sustainability and growth. The growing focus on enhancing customer satisfaction is proving to be a significant driver in the expansion of the data mining software market. Organizations are increasingly leveraging data mining tools to sift through vast volumes of customer data—ranging from transactional records and website activity to social media engagement and call center logs—to uncover insights that directly influence customer experience strategies. Data mining software empowers companies to analyze customer behavior patterns, identify dissatisfaction triggers, and predict future preferences. Through techniques such as classification, clustering, and association rule mining, businesses can break down large datasets to understand what customers want, what they are likely to purchase next, and how they feel about the brand. These insights not only help in refining customer service but also in shaping product development, pricing strategies, and promotional campaigns. For instance, Netflix uses data mining to recommend personalized content by analyzing a user's viewing history, ratings, and preferences. This has led to increased user engagement and retention, highlighting how a deep understanding of customer preferences—made possible through data mining—can translate into competitive advantage. Moreover, companies are increasingly using these tools to create highly targeted and customer-specific marketing campaigns. By mining data from e-commerce transactions, browsing behavior, and demographic profiles, brands can tailor their offerings and communications to suit individual customer segments. For Instance Amazon continuously mines customer purchasing and browsing data to deliver personalized product recommendations, tailored promotions, and timely follow-ups. This not only enhances customer satisfaction but also significantly boosts conversion rates and average order value. According to a report by McKinsey, personalization can deliver five to eight times the ROI on marketing spend and lift sales by 10% or more—a powerful incentive for companies to adopt data mining software as part of their customer experience toolkit. (Source: https://www.mckinsey.com/capabilities/growth-marketing-and-sales/our-insights/personalizing-at-scale#/) The utility of data mining tools extends beyond e-commerce and streaming platforms. In the banking and financial services industry, for example, institutions use data mining to analyze customer feedback, call center transcripts, and usage data to detect pain points and improve service delivery. Bank of America, for instance, utilizes data mining and predictive analytics to monitor customer interactions and provide proactive service suggestions or fraud alerts, significantly improving user satisfaction and trust. (Source: https://futuredigitalfinance.wbresearch.com/blog/bank-of-americas-erica-client-interactions-future-ai-in-banking) Similarly, telecom companies like Vodafone use data mining to understand customer churn behavior and implement retention strategies based on insights drawn from service usage patterns and complaint histories. In addition to p...

  19. f

    DataSheet_1_The TargetMine Data Warehouse: Enhancement and Updates.pdf

    • frontiersin.figshare.com
    pdf
    Updated May 31, 2023
    + more versions
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    Yi-An Chen; Lokesh P. Tripathi; Takeshi Fujiwara; Tatsuya Kameyama; Mari N. Itoh; Kenji Mizuguchi (2023). DataSheet_1_The TargetMine Data Warehouse: Enhancement and Updates.pdf [Dataset]. http://doi.org/10.3389/fgene.2019.00934.s001
    Explore at:
    pdfAvailable download formats
    Dataset updated
    May 31, 2023
    Dataset provided by
    Frontiers
    Authors
    Yi-An Chen; Lokesh P. Tripathi; Takeshi Fujiwara; Tatsuya Kameyama; Mari N. Itoh; Kenji Mizuguchi
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Biological data analysis is the key to new discoveries in disease biology and drug discovery. The rapid proliferation of high-throughput ‘omics’ data has necessitated a need for tools and platforms that allow the researchers to combine and analyse different types of biological data and obtain biologically relevant knowledge. We had previously developed TargetMine, an integrative data analysis platform for target prioritisation and broad-based biological knowledge discovery. Here, we describe the newly modelled biological data types and the enhanced visual and analytical features of TargetMine. These enhancements have included: an enhanced coverage of gene–gene relations, small molecule metabolite to pathway mappings, an improved literature survey feature, and in silico prediction of gene functional associations such as protein–protein interactions and global gene co-expression. We have also described two usage examples on trans-omics data analysis and extraction of gene-disease associations using MeSH term descriptors. These examples have demonstrated how the newer enhancements in TargetMine have contributed to a more expansive coverage of the biological data space and can help interpret genotype–phenotype relations. TargetMine with its auxiliary toolkit is available at https://targetmine.mizuguchilab.org. The TargetMine source code is available at https://github.com/chenyian-nibio/targetmine-gradle.

  20. Z

    Data Analysis for the Systematic Literature Review of DL4SE

    • data.niaid.nih.gov
    • data-staging.niaid.nih.gov
    Updated Jul 19, 2024
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    Cody Watson; Nathan Cooper; David Nader; Kevin Moran; Denys Poshyvanyk (2024). Data Analysis for the Systematic Literature Review of DL4SE [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_4768586
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    Dataset updated
    Jul 19, 2024
    Dataset provided by
    Washington and Lee University
    College of William and Mary
    Authors
    Cody Watson; Nathan Cooper; David Nader; Kevin Moran; Denys Poshyvanyk
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Data Analysis is the process that supports decision-making and informs arguments in empirical studies. Descriptive statistics, Exploratory Data Analysis (EDA), and Confirmatory Data Analysis (CDA) are the approaches that compose Data Analysis (Xia & Gong; 2014). An Exploratory Data Analysis (EDA) comprises a set of statistical and data mining procedures to describe data. We ran EDA to provide statistical facts and inform conclusions. The mined facts allow attaining arguments that would influence the Systematic Literature Review of DL4SE.

    The Systematic Literature Review of DL4SE requires formal statistical modeling to refine the answers for the proposed research questions and formulate new hypotheses to be addressed in the future. Hence, we introduce DL4SE-DA, a set of statistical processes and data mining pipelines that uncover hidden relationships among Deep Learning reported literature in Software Engineering. Such hidden relationships are collected and analyzed to illustrate the state-of-the-art of DL techniques employed in the software engineering context.

    Our DL4SE-DA is a simplified version of the classical Knowledge Discovery in Databases, or KDD (Fayyad, et al; 1996). The KDD process extracts knowledge from a DL4SE structured database. This structured database was the product of multiple iterations of data gathering and collection from the inspected literature. The KDD involves five stages:

    Selection. This stage was led by the taxonomy process explained in section xx of the paper. After collecting all the papers and creating the taxonomies, we organize the data into 35 features or attributes that you find in the repository. In fact, we manually engineered features from the DL4SE papers. Some of the features are venue, year published, type of paper, metrics, data-scale, type of tuning, learning algorithm, SE data, and so on.

    Preprocessing. The preprocessing applied was transforming the features into the correct type (nominal), removing outliers (papers that do not belong to the DL4SE), and re-inspecting the papers to extract missing information produced by the normalization process. For instance, we normalize the feature “metrics” into “MRR”, “ROC or AUC”, “BLEU Score”, “Accuracy”, “Precision”, “Recall”, “F1 Measure”, and “Other Metrics”. “Other Metrics” refers to unconventional metrics found during the extraction. Similarly, the same normalization was applied to other features like “SE Data” and “Reproducibility Types”. This separation into more detailed classes contributes to a better understanding and classification of the paper by the data mining tasks or methods.

    Transformation. In this stage, we omitted to use any data transformation method except for the clustering analysis. We performed a Principal Component Analysis to reduce 35 features into 2 components for visualization purposes. Furthermore, PCA also allowed us to identify the number of clusters that exhibit the maximum reduction in variance. In other words, it helped us to identify the number of clusters to be used when tuning the explainable models.

    Data Mining. In this stage, we used three distinct data mining tasks: Correlation Analysis, Association Rule Learning, and Clustering. We decided that the goal of the KDD process should be oriented to uncover hidden relationships on the extracted features (Correlations and Association Rules) and to categorize the DL4SE papers for a better segmentation of the state-of-the-art (Clustering). A clear explanation is provided in the subsection “Data Mining Tasks for the SLR od DL4SE”. 5.Interpretation/Evaluation. We used the Knowledge Discover to automatically find patterns in our papers that resemble “actionable knowledge”. This actionable knowledge was generated by conducting a reasoning process on the data mining outcomes. This reasoning process produces an argument support analysis (see this link).

    We used RapidMiner as our software tool to conduct the data analysis. The procedures and pipelines were published in our repository.

    Overview of the most meaningful Association Rules. Rectangles are both Premises and Conclusions. An arrow connecting a Premise with a Conclusion implies that given some premise, the conclusion is associated. E.g., Given that an author used Supervised Learning, we can conclude that their approach is irreproducible with a certain Support and Confidence.

    Support = Number of occurrences this statement is true divided by the amount of statements Confidence = The support of the statement divided by the number of occurrences of the premise

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Dashlink (2025). Privacy Preserving Distributed Data Mining [Dataset]. https://catalog.data.gov/dataset/privacy-preserving-distributed-data-mining

Privacy Preserving Distributed Data Mining

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Dataset updated
Apr 10, 2025
Dataset provided by
Dashlink
Description

Distributed data mining from privacy-sensitive multi-party data is likely to play an important role in the next generation of integrated vehicle health monitoring systems. For example, consider an airline manufacturer [tex]$\mathcal{C}$[/tex] manufacturing an aircraft model [tex]$A$[/tex] and selling it to five different airline operating companies [tex]$\mathcal{V}_1 \dots \mathcal{V}_5$[/tex]. These aircrafts, during their operation, generate huge amount of data. Mining this data can reveal useful information regarding the health and operability of the aircraft which can be useful for disaster management and prediction of efficient operating regimes. Now if the manufacturer [tex]$\mathcal{C}$[/tex] wants to analyze the performance data collected from different aircrafts of model-type [tex]$A$[/tex] belonging to different airlines then central collection of data for subsequent analysis may not be an option. It should be noted that the result of this analysis may be statistically more significant if the data for aircraft model [tex]$A$[/tex] across all companies were available to [tex]$\mathcal{C}$[/tex]. The potential problems arising out of such a data mining scenario are:

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