100+ datasets found
  1. B

    CRIME STATISTICS DATA ANALYTICS

    • borealisdata.ca
    • dataverse.scholarsportal.info
    Updated Jan 17, 2019
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    Cheryl Kwong; Drew Anweiler; Mary Sarafraz (2019). CRIME STATISTICS DATA ANALYTICS [Dataset]. http://doi.org/10.5683/SP2/IE6NRY
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jan 17, 2019
    Dataset provided by
    Borealis
    Authors
    Cheryl Kwong; Drew Anweiler; Mary Sarafraz
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    Crime isn't a topic most people want to use mental energy to think about. We want to avoid harm, protect our loved ones, and hold on to what we claim is ours. So how do we remain vigilant without digging too deep into the filth that is crime? Data, of course. The focus of our study is to explore possible trends between crime and communities in the city of Calgary. Our purpose is visualize Calgary criminal behaviour in order to help increase awareness for both citizens and law enforcement. Through the use of our visuals, individuals can make more informed decisions to improve the overall safety of their lives. Some of the main concerns of the study include: how crime rates increase with population, which areas in Calgary have the most crime, and if crime adheres to time-sensative patterns.

  2. Top uses of data an analytics within companies worldwide 2018

    • statista.com
    Updated Aug 8, 2018
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    Statista (2018). Top uses of data an analytics within companies worldwide 2018 [Dataset]. https://www.statista.com/statistics/893798/worldwide-data-analytics-top-uses-companies/
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    Dataset updated
    Aug 8, 2018
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    2018
    Area covered
    Worldwide
    Description

    This statistic shows the ways that companies are using data and analytics worldwide as of 2018. Around ** percent of respondents stated that one of the top uses of data and analytics in their company was as a driver of strategy and change.

  3. Advancement of data, analytics, and AI function in the U.S. and Europe 2023

    • statista.com
    Updated Oct 15, 2023
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    Statista (2023). Advancement of data, analytics, and AI function in the U.S. and Europe 2023 [Dataset]. https://www.statista.com/statistics/1455666/ai-function-analytics-advancement-united-states-europe/
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    Dataset updated
    Oct 15, 2023
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    2023
    Area covered
    Europe, United States
    Description

    As of 2023, most surveyed companies in the United States and Europe, or ** percent, claim to be either industry leaders in terms of data, analytics, and artificial intelligence (AI) function advancements or about the same as their industry peers.

  4. Market share of leading data analytics tools globally 2023

    • statista.com
    Updated Jun 26, 2025
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    Statista (2025). Market share of leading data analytics tools globally 2023 [Dataset]. https://www.statista.com/statistics/982516/most-popular-data-analytics-software/
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    Dataset updated
    Jun 26, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Dec 2022 - Mar 2023
    Area covered
    Worldwide
    Description

    In 2023, Morningstar Advisor Workstation was by far the most popular data analytics software worldwide. According to a survey carried out between December 2022 and March 2023, the market share of Morningstar Advisor Workstation was ***** percent. It was followed by Riskalyze Elite, with ***** percent, and YCharts, with ***** percent.

  5. f

    UC_vs_US Statistic Analysis.xlsx

    • figshare.com
    xlsx
    Updated Jul 9, 2020
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    F. (Fabiano) Dalpiaz (2020). UC_vs_US Statistic Analysis.xlsx [Dataset]. http://doi.org/10.23644/uu.12631628.v1
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    xlsxAvailable download formats
    Dataset updated
    Jul 9, 2020
    Dataset provided by
    Utrecht University
    Authors
    F. (Fabiano) Dalpiaz
    License

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

    Description

    Sheet 1 (Raw-Data): The raw data of the study is provided, presenting the tagging results for the used measures described in the paper. For each subject, it includes multiple columns: A. a sequential student ID B an ID that defines a random group label and the notation C. the used notation: user Story or use Cases D. the case they were assigned to: IFA, Sim, or Hos E. the subject's exam grade (total points out of 100). Empty cells mean that the subject did not take the first exam F. a categorical representation of the grade L/M/H, where H is greater or equal to 80, M is between 65 included and 80 excluded, L otherwise G. the total number of classes in the student's conceptual model H. the total number of relationships in the student's conceptual model I. the total number of classes in the expert's conceptual model J. the total number of relationships in the expert's conceptual model K-O. the total number of encountered situations of alignment, wrong representation, system-oriented, omitted, missing (see tagging scheme below) P. the researchers' judgement on how well the derivation process explanation was explained by the student: well explained (a systematic mapping that can be easily reproduced), partially explained (vague indication of the mapping ), or not present.

    Tagging scheme:
    Aligned (AL) - A concept is represented as a class in both models, either
    

    with the same name or using synonyms or clearly linkable names; Wrongly represented (WR) - A class in the domain expert model is incorrectly represented in the student model, either (i) via an attribute, method, or relationship rather than class, or (ii) using a generic term (e.g., user'' instead ofurban planner''); System-oriented (SO) - A class in CM-Stud that denotes a technical implementation aspect, e.g., access control. Classes that represent legacy system or the system under design (portal, simulator) are legitimate; Omitted (OM) - A class in CM-Expert that does not appear in any way in CM-Stud; Missing (MI) - A class in CM-Stud that does not appear in any way in CM-Expert.

    All the calculations and information provided in the following sheets
    

    originate from that raw data.

    Sheet 2 (Descriptive-Stats): Shows a summary of statistics from the data collection,
    

    including the number of subjects per case, per notation, per process derivation rigor category, and per exam grade category.

    Sheet 3 (Size-Ratio):
    

    The number of classes within the student model divided by the number of classes within the expert model is calculated (describing the size ratio). We provide box plots to allow a visual comparison of the shape of the distribution, its central value, and its variability for each group (by case, notation, process, and exam grade) . The primary focus in this study is on the number of classes. However, we also provided the size ratio for the number of relationships between student and expert model.

    Sheet 4 (Overall):
    

    Provides an overview of all subjects regarding the encountered situations, completeness, and correctness, respectively. Correctness is defined as the ratio of classes in a student model that is fully aligned with the classes in the corresponding expert model. It is calculated by dividing the number of aligned concepts (AL) by the sum of the number of aligned concepts (AL), omitted concepts (OM), system-oriented concepts (SO), and wrong representations (WR). Completeness on the other hand, is defined as the ratio of classes in a student model that are correctly or incorrectly represented over the number of classes in the expert model. Completeness is calculated by dividing the sum of aligned concepts (AL) and wrong representations (WR) by the sum of the number of aligned concepts (AL), wrong representations (WR) and omitted concepts (OM). The overview is complemented with general diverging stacked bar charts that illustrate correctness and completeness.

    For sheet 4 as well as for the following four sheets, diverging stacked bar
    

    charts are provided to visualize the effect of each of the independent and mediated variables. The charts are based on the relative numbers of encountered situations for each student. In addition, a "Buffer" is calculated witch solely serves the purpose of constructing the diverging stacked bar charts in Excel. Finally, at the bottom of each sheet, the significance (T-test) and effect size (Hedges' g) for both completeness and correctness are provided. Hedges' g was calculated with an online tool: https://www.psychometrica.de/effect_size.html. The independent and moderating variables can be found as follows:

    Sheet 5 (By-Notation):
    

    Model correctness and model completeness is compared by notation - UC, US.

    Sheet 6 (By-Case):
    

    Model correctness and model completeness is compared by case - SIM, HOS, IFA.

    Sheet 7 (By-Process):
    

    Model correctness and model completeness is compared by how well the derivation process is explained - well explained, partially explained, not present.

    Sheet 8 (By-Grade):
    

    Model correctness and model completeness is compared by the exam grades, converted to categorical values High, Low , and Medium.

  6. Statistical Data Analysis using R

    • figshare.com
    txt
    Updated May 30, 2023
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    Samuel Barsanelli Costa (2023). Statistical Data Analysis using R [Dataset]. http://doi.org/10.6084/m9.figshare.5501035.v1
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    txtAvailable download formats
    Dataset updated
    May 30, 2023
    Dataset provided by
    Figsharehttp://figshare.com/
    figshare
    Authors
    Samuel Barsanelli Costa
    License

    MIT Licensehttps://opensource.org/licenses/MIT
    License information was derived automatically

    Description

    R Scripts contain statistical data analisys for streamflow and sediment data, including Flow Duration Curves, Double Mass Analysis, Nonlinear Regression Analysis for Suspended Sediment Rating Curves, Stationarity Tests and include several plots.

  7. f

    Big Data Analytics Market Size, Value & Share Analysis [2032]

    • fortunebusinessinsights.com
    Updated Apr 4, 2025
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    Fortune Business Insights (2025). Big Data Analytics Market Size, Value & Share Analysis [2032] [Dataset]. https://www.fortunebusinessinsights.com/big-data-analytics-market-106179
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    Dataset updated
    Apr 4, 2025
    Dataset authored and provided by
    Fortune Business Insights
    License

    https://www.fortunebusinessinsights.com/privacy/https://www.fortunebusinessinsights.com/privacy/

    Area covered
    Worldwide
    Description

    The global big data analytics market size was valued at $307.52 billion in 2023 & is projected to grow from $348.21 billion in 2024 to $961.89 billion by 2032

  8. d

    Tabular statistical summay of data analysis - Calawah River Riverscape Study...

    • catalog.data.gov
    • s.cnmilf.com
    • +1more
    Updated May 24, 2025
    + more versions
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    (Point of Contact, Custodian) (2025). Tabular statistical summay of data analysis - Calawah River Riverscape Study [Dataset]. https://catalog.data.gov/dataset/tabular-statistical-summay-of-data-analysis-calawah-river-riverscape-study3
    Explore at:
    Dataset updated
    May 24, 2025
    Dataset provided by
    (Point of Contact, Custodian)
    Area covered
    Calawah River
    Description

    The objective of this study was to identify the patterns of juvenile salmonid distribution and relative abundance in relation to habitat correlates. It is the first dataset of its kind because the entire river was snorkeled by one person in multiple years. During two consecutive summers, we completed a census of juvenile salmonids and stream habitat across a stream network. We used the data to test the ability of habitat models to explain the distribution of juvenile coho salmon (Oncorhynchus kisutch), young-of-the-year (age 0) steelhead (Oncorhynchus mykiss), and steelhead parr (= age 1) for a network consisting of several different sized streams. Our network-scale models, which included five stream habitat variables, explained 27%, 11%, and 19% of the variation in the density of juvenile coho salmon, age 0 steelhead, and steelhead parr, respectively. We found weak to strong levels of spatial auto-correlation in the model residuals (Moran's I values ranging from 0.25 - 0.71). Explanatory power of base habitat models increased substantially and the level of spatial auto-correlation decreased with sequential inclusion of variables accounting for stream size, year, stream, and reach location. The models for specific streams underscored the variability that was implied in the network-scale models. Associations between juvenile salmonids and individual habitat variables were rarely linear and ranged from negative to positive, and the variable accounting for location of the habitat within a stream was often more important than any individual habitat variable. The limited success in predicting the summer distribution and density of juvenile coho salmon and steelhead with our network-scale models was apparently related to variation in the strength and shape of fish-habitat associations across and within streams and years. Summary of statistical analysis of the Calawah Riverscape data. NOAA was not involved and did not pay for the collection of this data. This data represents the statistical analysis carried out by Martin Liermann as a NOAA employee.

  9. Global advanced analytics and data science software market share 2025

    • statista.com
    Updated Oct 30, 2019
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    Statista (2019). Global advanced analytics and data science software market share 2025 [Dataset]. https://www.statista.com/statistics/1258535/advanced-analytics-data-science-market-share-technology-worldwide/
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    Dataset updated
    Oct 30, 2019
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    2025
    Area covered
    Worldwide
    Description

    MATLAB led the global advanced analytics and data science software industry in 2025 with a market share of ***** percent. First launched in 1984, MATLAB is developed by the U.S. firm MathWorks.

  10. Data Analytics to Identify Key Trends and Stats

    • kaggle.com
    zip
    Updated Oct 11, 2022
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    PriyankaJ7 (2022). Data Analytics to Identify Key Trends and Stats [Dataset]. https://www.kaggle.com/datasets/priyankaj7/data-analytics-to-identify-key-trends-and-stats
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    zip(49817615 bytes)Available download formats
    Dataset updated
    Oct 11, 2022
    Authors
    PriyankaJ7
    Description

    Dataset

    This dataset was created by PriyankaJ7

    Contents

  11. m

    COVID-19 Combined Data-set with Improved Measurement Errors

    • data.mendeley.com
    Updated May 13, 2020
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    Afshin Ashofteh (2020). COVID-19 Combined Data-set with Improved Measurement Errors [Dataset]. http://doi.org/10.17632/nw5m4hs3jr.3
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    Dataset updated
    May 13, 2020
    Authors
    Afshin Ashofteh
    License

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

    Description

    Public health-related decision-making on policies aimed at controlling the COVID-19 pandemic outbreak depends on complex epidemiological models that are compelled to be robust and use all relevant available data. This data article provides a new combined worldwide COVID-19 dataset obtained from official data sources with improved systematic measurement errors and a dedicated dashboard for online data visualization and summary. The dataset adds new measures and attributes to the normal attributes of official data sources, such as daily mortality, and fatality rates. We used comparative statistical analysis to evaluate the measurement errors of COVID-19 official data collections from the Chinese Center for Disease Control and Prevention (Chinese CDC), World Health Organization (WHO) and European Centre for Disease Prevention and Control (ECDC). The data is collected by using text mining techniques and reviewing pdf reports, metadata, and reference data. The combined dataset includes complete spatial data such as countries area, international number of countries, Alpha-2 code, Alpha-3 code, latitude, longitude, and some additional attributes such as population. The improved dataset benefits from major corrections on the referenced data sets and official reports such as adjustments in the reporting dates, which suffered from a one to two days lag, removing negative values, detecting unreasonable changes in historical data in new reports and corrections on systematic measurement errors, which have been increasing as the pandemic outbreak spreads and more countries contribute data for the official repositories. Additionally, the root mean square error of attributes in the paired comparison of datasets was used to identify the main data problems. The data for China is presented separately and in more detail, and it has been extracted from the attached reports available on the main page of the CCDC website. This dataset is a comprehensive and reliable source of worldwide COVID-19 data that can be used in epidemiological models assessing the magnitude and timeline for confirmed cases, long-term predictions of deaths or hospital utilization, the effects of quarantine, stay-at-home orders and other social distancing measures, the pandemic’s turning point or in economic and social impact analysis, helping to inform national and local authorities on how to implement an adaptive response approach to re-opening the economy, re-open schools, alleviate business and social distancing restrictions, design economic programs or allow sports events to resume.

  12. Statistical Analysis data

    • kaggle.com
    zip
    Updated Sep 29, 2022
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    Md Farhan Ishrak (2022). Statistical Analysis data [Dataset]. https://www.kaggle.com/datasets/mdfarhanishrak/statistical-analysis-data
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    zip(2967 bytes)Available download formats
    Dataset updated
    Sep 29, 2022
    Authors
    Md Farhan Ishrak
    Description

    Dataset

    This dataset was created by Md Farhan Ishrak

    Contents

  13. An Insight Into What Is Data Analytics?

    • kaggle.com
    zip
    Updated Sep 19, 2022
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    itcourses (2022). An Insight Into What Is Data Analytics? [Dataset]. https://www.kaggle.com/itcourses/an-insight-into-what-is-data-analytics
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    zip(60771 bytes)Available download formats
    Dataset updated
    Sep 19, 2022
    Authors
    itcourses
    Description

    What exactly is data analytics and do you want to learn so Visit BookMyShiksha they provide the Best Data Analytics Course in Delhi, INDIA. Analytics can be defined as "the science of analysis." A more practical definition, however, would be how an entity, such as a business, arrives at an optimal or realistic decision based on available data. Business managers may choose to make decisions based on past experiences or rules of thumb, or there may be other qualitative aspects to decision-making. Still, it will not be an analytical decision-making process unless data is considered.

    Analytics has been used in business since Frederick Winslow Taylor pioneered time management exercises in the late 1800s. Henry Ford revolutionized manufacturing by measuring the pacing of the assembly line. However, analytics gained popularity in the late 1960s, when computers were used in decision support systems. Analytics has evolved since then, with the development of enterprise resource planning (ERP) systems, data warehouses, and a wide range of other hardware and software tools and applications.

    Analytics is now used by businesses of all sizes. For example, if you ask my fruit vendor why he stopped servicing our street, he will tell you that we try to bargain a lot, which causes him to lose money, but on the road next to mine, he has some great customers for whom he provides excellent service. This is the nucleus of analytics. Our fruit vendor TESTED servicing my street and realised he was losing money - within a month, he stopped servicing us and will not show up even if we ask him. How many companies today are aware of who their MOST PROFITABLE CUSTOMERS are? Do they know who their most profitable customers are? And, knowing which customers are the most profitable, how should you direct your efforts to acquire the MOST PROFITABLE customers?

    Analytics is used to drive the overall organizational strategy in large corporations. Here are a few examples: • Capital One, a credit card company based in the United States, employs analytics to differentiate customers based on credit risk and to match customer characteristics with appropriate product offerings.

    • Harrah's Casino, another American company, discovered that, contrary to popular belief, their most profitable customers are those who play slots. They have developed a mamarketing program to attract and retain their MOST PROFITABLE CUSTOMERS in order to capitalise on this insight.

    • Netflicks, an online movie service, recommends the most logical movies based on past behavior. This model has increased their sales because the movie choices are based on the customers' preferences, and thus the experience is tailored to each individual.

    Analytics is commonly used to study business data using statistical analysis to discover and understand historical patterns in order to predict and improve future business performance. In addition, some people use the term to refer to the application of mathematics in business. Others believe that the field of analytics includes the use of operations research, statistics, and probability; however, limiting the field of Best Big Data Analytics Services to statistics and mathematics would be incorrect.

    While the concept is simple and intuitive, the widespread use of analytics to drive business is still in its infancy. Stay tuned for the second part of this article to learn more about the Science of Analytics.

  14. d

    Protected Areas Database of the United States (PAD-US) 3.0 Vector Analysis...

    • catalog.data.gov
    • data.usgs.gov
    • +1more
    Updated Oct 22, 2025
    + more versions
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    U.S. Geological Survey (2025). Protected Areas Database of the United States (PAD-US) 3.0 Vector Analysis and Summary Statistics [Dataset]. https://catalog.data.gov/dataset/protected-areas-database-of-the-united-states-pad-us-3-0-vector-analysis-and-summary-stati
    Explore at:
    Dataset updated
    Oct 22, 2025
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Area covered
    United States
    Description

    Spatial analysis and statistical summaries of the Protected Areas Database of the United States (PAD-US) provide land managers and decision makers with a general assessment of management intent for biodiversity protection, natural resource management, and recreation access across the nation. The PAD-US 3.0 Combined Fee, Designation, Easement feature class (with Military Lands and Tribal Areas from the Proclamation and Other Planning Boundaries feature class) was modified to remove overlaps, avoiding overestimation in protected area statistics and to support user needs. A Python scripted process ("PADUS3_0_CreateVectorAnalysisFileScript.zip") associated with this data release prioritized overlapping designations (e.g. Wilderness within a National Forest) based upon their relative biodiversity conservation status (e.g. GAP Status Code 1 over 2), public access values (in the order of Closed, Restricted, Open, Unknown), and geodatabase load order (records are deliberately organized in the PAD-US full inventory with fee owned lands loaded before overlapping management designations, and easements). The Vector Analysis File ("PADUS3_0VectorAnalysisFile_ClipCensus.zip") associated item of PAD-US 3.0 Spatial Analysis and Statistics ( https://doi.org/10.5066/P9KLBB5D ) was clipped to the Census state boundary file to define the extent and serve as a common denominator for statistical summaries. Boundaries of interest to stakeholders (State, Department of the Interior Region, Congressional District, County, EcoRegions I-IV, Urban Areas, Landscape Conservation Cooperative) were incorporated into separate geodatabase feature classes to support various data summaries ("PADUS3_0VectorAnalysisFileOtherExtents_Clip_Census.zip") and Comma-separated Value (CSV) tables ("PADUS3_0SummaryStatistics_TabularData_CSV.zip") summarizing "PADUS3_0VectorAnalysisFileOtherExtents_Clip_Census.zip" are provided as an alternative format and enable users to explore and download summary statistics of interest (Comma-separated Table [CSV], Microsoft Excel Workbook [.XLSX], Portable Document Format [.PDF] Report) from the PAD-US Lands and Inland Water Statistics Dashboard ( https://www.usgs.gov/programs/gap-analysis-project/science/pad-us-statistics ). In addition, a "flattened" version of the PAD-US 3.0 combined file without other extent boundaries ("PADUS3_0VectorAnalysisFile_ClipCensus.zip") allow for other applications that require a representation of overall protection status without overlapping designation boundaries. The "PADUS3_0VectorAnalysis_State_Clip_CENSUS2020" feature class ("PADUS3_0VectorAnalysisFileOtherExtents_Clip_Census.gdb") is the source of the PAD-US 3.0 raster files (associated item of PAD-US 3.0 Spatial Analysis and Statistics, https://doi.org/10.5066/P9KLBB5D ). Note, the PAD-US inventory is now considered functionally complete with the vast majority of land protection types represented in some manner, while work continues to maintain updates and improve data quality (see inventory completeness estimates at: http://www.protectedlands.net/data-stewards/ ). In addition, changes in protected area status between versions of the PAD-US may be attributed to improving the completeness and accuracy of the spatial data more than actual management actions or new acquisitions. USGS provides no legal warranty for the use of this data. While PAD-US is the official aggregation of protected areas ( https://www.fgdc.gov/ngda-reports/NGDA_Datasets.html ), agencies are the best source of their lands data.

  15. r

    Journal of business analytics Impact Factor 2024-2025 - ResearchHelpDesk

    • researchhelpdesk.org
    Updated Feb 23, 2022
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    Research Help Desk (2022). Journal of business analytics Impact Factor 2024-2025 - ResearchHelpDesk [Dataset]. https://www.researchhelpdesk.org/journal/impact-factor-if/571/journal-of-business-analytics
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    Dataset updated
    Feb 23, 2022
    Dataset authored and provided by
    Research Help Desk
    Description

    Journal of business analytics Impact Factor 2024-2025 - ResearchHelpDesk - Business analytics research focuses on developing new insights and a holistic understanding of an organisation’s business environment to help make timely and accurate decisions, and to survive, innovate and grow. Thus, business analytics draws on the full spectrum of descriptive/diagnostic, predictive and prescriptive analytics in order to make better (i.e., data-driven and evidence-based) decisions to create business value in the broadest sense. The mission of the Journal of Business Analytics Journal (JBA) is to serve the emerging and rapidly growing community of business analytics academics and practitioners. We aim to publish articles that use real-world data and cases to tackle problem situations in a creative and innovative manner. We solicit articles that address an interesting research problem, collect and/or repurpose multiple types of data sets, and develop and evaluate analytics methods and methodologies to help organisations apply business analytics in new and novel ways. Reports of research using qualitative or quantitative approaches are welcomed, as are interdisciplinary and mixed methods approaches. Topics may include: Applications of AI and machine learning methods in business analytics Network science and social network applications for business Social media analytics Statistics and econometrics in business analytics Use of novel data science techniques in business analytics Robotics and autonomous vehicles Methods and methodologies for business analytics development and deployment Organisational factors in business analytics Responsible use of business analytics and AI Ethical and social implications of business analytics and AI Bias and explainability in analytics and AI Our editorial philosophy is to publish papers that contribute to theory and practice. Journal of Business Analytics is indexed in: AIS eLibrary Australian Business Deans Council (ABDC) Journal Quality List British Library CLOCKSS Crossref Ei Compendex (Engineering Village) Google Scholar Microsoft Academic Portico SCImago Scopus Ulrich's Periodicals Directory

  16. B

    Biostatistics Software Report

    • archivemarketresearch.com
    doc, pdf, ppt
    Updated Mar 7, 2025
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    Archive Market Research (2025). Biostatistics Software Report [Dataset]. https://www.archivemarketresearch.com/reports/biostatistics-software-53353
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    doc, ppt, pdfAvailable download formats
    Dataset updated
    Mar 7, 2025
    Dataset authored and provided by
    Archive Market Research
    License

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

    Time period covered
    2025 - 2033
    Area covered
    Global
    Variables measured
    Market Size
    Description

    The biostatistics software market is experiencing robust growth, driven by the increasing adoption of data-driven approaches in pharmaceutical research, clinical trials, and academic studies. The market, valued at approximately $2.5 billion in 2025, is projected to exhibit a Compound Annual Growth Rate (CAGR) of 12% from 2025 to 2033. This expansion is fueled by several key factors. Firstly, the rising volume of complex biological data necessitates sophisticated software solutions for analysis and interpretation. Secondly, advancements in machine learning and artificial intelligence are enhancing the capabilities of biostatistics software, enabling more accurate and efficient data processing. Thirdly, regulatory pressures demanding robust data analysis in the pharmaceutical and healthcare sectors are boosting demand for validated and compliant biostatistics tools. The market is segmented by software type (general-purpose versus specialized) and end-user (pharmaceutical companies, academic institutions, and others). Pharmaceutical companies represent a significant portion of the market due to their extensive reliance on clinical trial data analysis. However, the academic and research segments are also exhibiting strong growth due to increased research activities and funding. Geographically, North America and Europe currently dominate the market, but Asia-Pacific is expected to witness substantial growth in the coming years due to increasing healthcare spending and technological advancements in the region. The competitive landscape is characterized by a mix of established players offering comprehensive suites and specialized niche vendors. While leading players like IBM SPSS Statistics and Minitab enjoy significant market share based on their brand recognition and established user bases, smaller companies specializing in specific statistical methods or user interfaces are gaining traction by catering to niche demands. This competitive dynamic will likely drive innovation and further segmentation within the market, resulting in specialized software offerings tailored to particular research areas and user requirements. The challenges the market faces include the high cost of software licensing, the need for specialized training for effective utilization, and the potential integration complexities with existing data management systems. However, the overall growth trajectory remains positive, driven by the inherent need for sophisticated biostatistical analysis in various sectors.

  17. f

    Descriptive statistics.

    • plos.figshare.com
    xls
    Updated Oct 31, 2023
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    Mrinal Saha; Aparna Deb; Imtiaz Sultan; Sujat Paul; Jishan Ahmed; Goutam Saha (2023). Descriptive statistics. [Dataset]. http://doi.org/10.1371/journal.pgph.0002475.t003
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    xlsAvailable download formats
    Dataset updated
    Oct 31, 2023
    Dataset provided by
    PLOS Global Public Health
    Authors
    Mrinal Saha; Aparna Deb; Imtiaz Sultan; Sujat Paul; Jishan Ahmed; Goutam Saha
    License

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

    Description

    Vitamin D insufficiency appears to be prevalent in SLE patients. Multiple factors potentially contribute to lower vitamin D levels, including limited sun exposure, the use of sunscreen, darker skin complexion, aging, obesity, specific medical conditions, and certain medications. The study aims to assess the risk factors associated with low vitamin D levels in SLE patients in the southern part of Bangladesh, a region noted for a high prevalence of SLE. The research additionally investigates the possible correlation between vitamin D and the SLEDAI score, seeking to understand the potential benefits of vitamin D in enhancing disease outcomes for SLE patients. The study incorporates a dataset consisting of 50 patients from the southern part of Bangladesh and evaluates their clinical and demographic data. An initial exploratory data analysis is conducted to gain insights into the data, which includes calculating means and standard deviations, performing correlation analysis, and generating heat maps. Relevant inferential statistical tests, such as the Student’s t-test, are also employed. In the machine learning part of the analysis, this study utilizes supervised learning algorithms, specifically Linear Regression (LR) and Random Forest (RF). To optimize the hyperparameters of the RF model and mitigate the risk of overfitting given the small dataset, a 3-Fold cross-validation strategy is implemented. The study also calculates bootstrapped confidence intervals to provide robust uncertainty estimates and further validate the approach. A comprehensive feature importance analysis is carried out using RF feature importance, permutation-based feature importance, and SHAP values. The LR model yields an RMSE of 4.83 (CI: 2.70, 6.76) and MAE of 3.86 (CI: 2.06, 5.86), whereas the RF model achieves better results, with an RMSE of 2.98 (CI: 2.16, 3.76) and MAE of 2.68 (CI: 1.83,3.52). Both models identify Hb, CRP, ESR, and age as significant contributors to vitamin D level predictions. Despite the lack of a significant association between SLEDAI and vitamin D in the statistical analysis, the machine learning models suggest a potential nonlinear dependency of vitamin D on SLEDAI. These findings highlight the importance of these factors in managing vitamin D levels in SLE patients. The study concludes that there is a high prevalence of vitamin D insufficiency in SLE patients. Although a direct linear correlation between the SLEDAI score and vitamin D levels is not observed, machine learning models suggest the possibility of a nonlinear relationship. Furthermore, factors such as Hb, CRP, ESR, and age are identified as more significant in predicting vitamin D levels. Thus, the study suggests that monitoring these factors may be advantageous in managing vitamin D levels in SLE patients. Given the immunological nature of SLE, the potential role of vitamin D in SLE disease activity could be substantial. Therefore, it underscores the need for further large-scale studies to corroborate this hypothesis.

  18. f

    Analysis of data and statistics

    • datasetcatalog.nlm.nih.gov
    • figshare.com
    Updated Oct 13, 2023
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    Ruiz-Gabarre, Daniel; Avila, Jesus; García-Escudero, Vega; Vallés-Saiz, Laura (2023). Analysis of data and statistics [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001091448
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    Dataset updated
    Oct 13, 2023
    Authors
    Ruiz-Gabarre, Daniel; Avila, Jesus; García-Escudero, Vega; Vallés-Saiz, Laura
    Description

    Data analysis of the detection of intron 3 and intron 12 retaining MAPT species by digital droplet PCR in frontal lateral cortex, hippocampal and cerebellum samples of non-demented individuals and Alzheimer's disease patients. Each retention was detected in a different fluorophore. There are species that retain both introns TIR3+12-MAPT (Fam +, Hex +) which would be translated into DW-Tau (double intron retention), species that retain only intron 3 TIR3-MAPT (Fam +, Hex -) which would be translated into NW-Tau (Nt truncation) or species that retain only intron 12 TIR12-MAPT (Fam -, Hex +) which would be translated into CW-Tau (Ct truncation). Additionally Tubulin-beta and total-MAPT levels were measured by ddPCR to perform normalization.

  19. m

    2025 Green Card Report for Master In Business Administration Business...

    • myvisajobs.com
    Updated Jan 16, 2025
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    MyVisaJobs (2025). 2025 Green Card Report for Master In Business Administration Business Statistics Data Analytics [Dataset]. https://www.myvisajobs.com/reports/green-card/major/master-in-business-administration--business-statistics--data-analytics
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    Dataset updated
    Jan 16, 2025
    Dataset authored and provided by
    MyVisaJobs
    License

    https://www.myvisajobs.com/terms-of-service/https://www.myvisajobs.com/terms-of-service/

    Variables measured
    Major, Salary, Petitions Filed
    Description

    A dataset that explores Green Card sponsorship trends, salary data, and employer insights for master in business administration business statistics data analytics in the U.S.

  20. e

    Computational Statistics and Data Analysis - if-computation

    • exaly.com
    csv, json
    Updated Nov 1, 2025
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    (2025). Computational Statistics and Data Analysis - if-computation [Dataset]. https://exaly.com/journal/14378/computational-statistics-and-data-analysis/impact-factor
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    csv, jsonAvailable download formats
    Dataset updated
    Nov 1, 2025
    License

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

    Description

    This graph shows how the impact factor of ^ is computed. The left axis depicts the number of papers published in years X-1 and X-2, and the right axis displays their citations in year X.

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Cheryl Kwong; Drew Anweiler; Mary Sarafraz (2019). CRIME STATISTICS DATA ANALYTICS [Dataset]. http://doi.org/10.5683/SP2/IE6NRY

CRIME STATISTICS DATA ANALYTICS

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CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
Dataset updated
Jan 17, 2019
Dataset provided by
Borealis
Authors
Cheryl Kwong; Drew Anweiler; Mary Sarafraz
License

CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically

Description

Crime isn't a topic most people want to use mental energy to think about. We want to avoid harm, protect our loved ones, and hold on to what we claim is ours. So how do we remain vigilant without digging too deep into the filth that is crime? Data, of course. The focus of our study is to explore possible trends between crime and communities in the city of Calgary. Our purpose is visualize Calgary criminal behaviour in order to help increase awareness for both citizens and law enforcement. Through the use of our visuals, individuals can make more informed decisions to improve the overall safety of their lives. Some of the main concerns of the study include: how crime rates increase with population, which areas in Calgary have the most crime, and if crime adheres to time-sensative patterns.

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