100+ datasets found
  1. 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.

  2. Data from: Excel Templates: A Helpful Tool for Teaching Statistics

    • tandf.figshare.com
    zip
    Updated May 30, 2023
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    Alejandro Quintela-del-Río; Mario Francisco-Fernández (2023). Excel Templates: A Helpful Tool for Teaching Statistics [Dataset]. http://doi.org/10.6084/m9.figshare.3408052.v2
    Explore at:
    zipAvailable download formats
    Dataset updated
    May 30, 2023
    Dataset provided by
    Taylor & Francishttps://taylorandfrancis.com/
    Authors
    Alejandro Quintela-del-Río; Mario Francisco-Fernández
    License

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

    Description

    This article describes a free, open-source collection of templates for the popular Excel (2013, and later versions) spreadsheet program. These templates are spreadsheet files that allow easy and intuitive learning and the implementation of practical examples concerning descriptive statistics, random variables, confidence intervals, and hypothesis testing. Although they are designed to be used with Excel, they can also be employed with other free spreadsheet programs (changing some particular formulas). Moreover, we exploit some possibilities of the ActiveX controls of the Excel Developer Menu to perform interactive Gaussian density charts. Finally, it is important to note that they can be often embedded in a web page, so it is not necessary to employ Excel software for their use. These templates have been designed as a useful tool to teach basic statistics and to carry out data analysis even when the students are not familiar with Excel. Additionally, they can be used as a complement to other analytical software packages. They aim to assist students in learning statistics, within an intuitive working environment. Supplementary materials with the Excel templates are available online.

  3. Scooter Sales - Excel Project

    • kaggle.com
    Updated Jun 8, 2023
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    Ann Truong (2023). Scooter Sales - Excel Project [Dataset]. https://www.kaggle.com/datasets/bvanntruong/scooter-sales-excel-project
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jun 8, 2023
    Dataset provided by
    Kaggle
    Authors
    Ann Truong
    Description

    The link for the Excel project to download can be found on GitHub here. It includes the raw data, Pivot Tables, and an interactive dashboard with Pivot Charts and Slicers. The project also includes business questions and the formulas I used to answer. The image below is included for ease. https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F12904052%2F61e460b5f6a1fa73cfaaa33aa8107bd5%2FBusinessQuestions.png?generation=1686190703261971&alt=media" alt=""> The link for the Tableau adjusted dashboard can be found here.

    A screenshot of the interactive Excel dashboard is also included below for ease. https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F12904052%2Fe581f1fce8afc732f7823904da9e4cce%2FScooter%20Dashboard%20Image.png?generation=1686190815608343&alt=media" alt="">

  4. f

    Excel spreadsheet containing the underlying numerical data and statistical...

    • datasetcatalog.nlm.nih.gov
    Updated Jul 31, 2024
    + more versions
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    MacNaughton, Wallace K.; Flannigan, Kyle; Baggio, Cristiane H.; Rajeev, Sruthi; Wang, Arthur; Kraemer, Lucas; Shute, Adam; Leon-Coria, Aralia; McKay, Derek M.; Boim, Annaliese; Wang, Susan Joanne; Li, ShuHua; Finney, Constance A. M.; Callejas, Blanca E. (2024). Excel spreadsheet containing the underlying numerical data and statistical analysis for all figures and tables. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001393869
    Explore at:
    Dataset updated
    Jul 31, 2024
    Authors
    MacNaughton, Wallace K.; Flannigan, Kyle; Baggio, Cristiane H.; Rajeev, Sruthi; Wang, Arthur; Kraemer, Lucas; Shute, Adam; Leon-Coria, Aralia; McKay, Derek M.; Boim, Annaliese; Wang, Susan Joanne; Li, ShuHua; Finney, Constance A. M.; Callejas, Blanca E.
    Description

    Excel spreadsheet containing the underlying numerical data and statistical analysis for all figures and tables.

  5. Retail data analysis project (excel)

    • kaggle.com
    zip
    Updated Dec 9, 2024
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    Soe Yan Naung (2024). Retail data analysis project (excel) [Dataset]. https://www.kaggle.com/datasets/ericyang19/retail-data-analysis-project-excel
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    zip(4306415 bytes)Available download formats
    Dataset updated
    Dec 9, 2024
    Authors
    Soe Yan Naung
    License

    Open Database License (ODbL) v1.0https://www.opendatacommons.org/licenses/odbl/1.0/
    License information was derived automatically

    Description

    In this project, I conducted a comprehensive analysis of retail and warehouse sales data to derive actionable insights. The primary objective was to understand sales trends, evaluate performance across channels, and identify key contributors to overall business success.

    To achieve this, I transformed raw data into interactive Excel dashboards that highlight sales performance and channel contributions, providing a clear and concise representation of business metrics.

    Key Highlights of the Project:

    Created two dashboards: Sales Dashboard and Contribution Dashboard. Answered critical business questions, such as monthly trends, channel performance, and top contributors. Presented actionable insights with professional visuals, making it easy for stakeholders to make data-driven decisions.

  6. 18 excel spreadsheets by species and year giving reproduction and growth...

    • catalog.data.gov
    • data.wu.ac.at
    Updated Aug 17, 2024
    + more versions
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    U.S. EPA Office of Research and Development (ORD) (2024). 18 excel spreadsheets by species and year giving reproduction and growth data. One excel spreadsheet of herbicide treatment chemistry. [Dataset]. https://catalog.data.gov/dataset/18-excel-spreadsheets-by-species-and-year-giving-reproduction-and-growth-data-one-excel-sp
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    Dataset updated
    Aug 17, 2024
    Dataset provided by
    United States Environmental Protection Agencyhttp://www.epa.gov/
    Description

    Excel spreadsheets by species (4 letter code is abbreviation for genus and species used in study, year 2010 or 2011 is year data collected, SH indicates data for Science Hub, date is date of file preparation). The data in a file are described in a read me file which is the first worksheet in each file. Each row in a species spreadsheet is for one plot (plant). The data themselves are in the data worksheet. One file includes a read me description of the column in the date set for chemical analysis. In this file one row is an herbicide treatment and sample for chemical analysis (if taken). This dataset is associated with the following publication: Olszyk , D., T. Pfleeger, T. Shiroyama, M. Blakely-Smith, E. Lee , and M. Plocher. Plant reproduction is altered by simulated herbicide drift toconstructed plant communities. ENVIRONMENTAL TOXICOLOGY AND CHEMISTRY. Society of Environmental Toxicology and Chemistry, Pensacola, FL, USA, 36(10): 2799-2813, (2017).

  7. e

    Data Analysis using MS-Excel

    • paper.erudition.co.in
    html
    Updated Dec 3, 2025
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    Einetic (2025). Data Analysis using MS-Excel [Dataset]. https://paper.erudition.co.in/makaut/bachelor-in-business-administration-2020-2021/5/data-analytics-skills-for-managers
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    htmlAvailable download formats
    Dataset updated
    Dec 3, 2025
    Dataset authored and provided by
    Einetic
    License

    https://paper.erudition.co.in/termshttps://paper.erudition.co.in/terms

    Description

    Question Paper Solutions of chapter Data Analysis using MS-Excel of Data Analytics Skills for Managers, 5th Semester , Bachelor in Business Administration 2020 - 2021

  8. m

    Dataset of development of business during the COVID-19 crisis

    • data.mendeley.com
    • narcis.nl
    Updated Nov 9, 2020
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    Tatiana N. Litvinova (2020). Dataset of development of business during the COVID-19 crisis [Dataset]. http://doi.org/10.17632/9vvrd34f8t.1
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    Dataset updated
    Nov 9, 2020
    Authors
    Tatiana N. Litvinova
    License

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

    Description

    To create the dataset, the top 10 countries leading in the incidence of COVID-19 in the world were selected as of October 22, 2020 (on the eve of the second full of pandemics), which are presented in the Global 500 ranking for 2020: USA, India, Brazil, Russia, Spain, France and Mexico. For each of these countries, no more than 10 of the largest transnational corporations included in the Global 500 rating for 2020 and 2019 were selected separately. The arithmetic averages were calculated and the change (increase) in indicators such as profitability and profitability of enterprises, their ranking position (competitiveness), asset value and number of employees. The arithmetic mean values of these indicators for all countries of the sample were found, characterizing the situation in international entrepreneurship as a whole in the context of the COVID-19 crisis in 2020 on the eve of the second wave of the pandemic. The data is collected in a general Microsoft Excel table. Dataset is a unique database that combines COVID-19 statistics and entrepreneurship statistics. The dataset is flexible data that can be supplemented with data from other countries and newer statistics on the COVID-19 pandemic. Due to the fact that the data in the dataset are not ready-made numbers, but formulas, when adding and / or changing the values in the original table at the beginning of the dataset, most of the subsequent tables will be automatically recalculated and the graphs will be updated. This allows the dataset to be used not just as an array of data, but as an analytical tool for automating scientific research on the impact of the COVID-19 pandemic and crisis on international entrepreneurship. The dataset includes not only tabular data, but also charts that provide data visualization. The dataset contains not only actual, but also forecast data on morbidity and mortality from COVID-19 for the period of the second wave of the pandemic in 2020. The forecasts are presented in the form of a normal distribution of predicted values and the probability of their occurrence in practice. This allows for a broad scenario analysis of the impact of the COVID-19 pandemic and crisis on international entrepreneurship, substituting various predicted morbidity and mortality rates in risk assessment tables and obtaining automatically calculated consequences (changes) on the characteristics of international entrepreneurship. It is also possible to substitute the actual values identified in the process and following the results of the second wave of the pandemic to check the reliability of pre-made forecasts and conduct a plan-fact analysis. The dataset contains not only the numerical values of the initial and predicted values of the set of studied indicators, but also their qualitative interpretation, reflecting the presence and level of risks of a pandemic and COVID-19 crisis for international entrepreneurship.

  9. m

    Raw data outputs 1-18

    • bridges.monash.edu
    • researchdata.edu.au
    xlsx
    Updated May 30, 2023
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    Abbas Salavaty Hosein Abadi; Sara Alaei; Mirana Ramialison; Peter Currie (2023). Raw data outputs 1-18 [Dataset]. http://doi.org/10.26180/21259491.v1
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    xlsxAvailable download formats
    Dataset updated
    May 30, 2023
    Dataset provided by
    Monash University
    Authors
    Abbas Salavaty Hosein Abadi; Sara Alaei; Mirana Ramialison; Peter Currie
    License

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

    Description

    Raw data outputs 1-18 Raw data output 1. Differentially expressed genes in AML CSCs compared with GTCs as well as in TCGA AML cancer samples compared with normal ones. This data was generated based on the results of AML microarray and TCGA data analysis. Raw data output 2. Commonly and uniquely differentially expressed genes in AML CSC/GTC microarray and TCGA bulk RNA-seq datasets. This data was generated based on the results of AML microarray and TCGA data analysis. Raw data output 3. Common differentially expressed genes between training and test set samples the microarray dataset. This data was generated based on the results of AML microarray data analysis. Raw data output 4. Detailed information on the samples of the breast cancer microarray dataset (GSE52327) used in this study. Raw data output 5. Differentially expressed genes in breast CSCs compared with GTCs as well as in TCGA BRCA cancer samples compared with normal ones. Raw data output 6. Commonly and uniquely differentially expressed genes in breast cancer CSC/GTC microarray and TCGA BRCA bulk RNA-seq datasets. This data was generated based on the results of breast cancer microarray and TCGA BRCA data analysis. CSC, and GTC are abbreviations of cancer stem cell, and general tumor cell, respectively. Raw data output 7. Differential and common co-expression and protein-protein interaction of genes between CSC and GTC samples. This data was generated based on the results of AML microarray and STRING database-based protein-protein interaction data analysis. CSC, and GTC are abbreviations of cancer stem cell, and general tumor cell, respectively. Raw data output 8. Differentially expressed genes between AML dormant and active CSCs. This data was generated based on the results of AML scRNA-seq data analysis. Raw data output 9. Uniquely expressed genes in dormant or active AML CSCs. This data was generated based on the results of AML scRNA-seq data analysis. Raw data output 10. Intersections between the targeting transcription factors of AML key CSC genes and differentially expressed genes between AML CSCs vs GTCs and between dormant and active AML CSCs or the uniquely expressed genes in either class of CSCs. Raw data output 11. Targeting desirableness score of AML key CSC genes and their targeting transcription factors. These scores were generated based on an in-house scoring function described in the Methods section. Raw data output 12. CSC-specific targeting desirableness score of AML key CSC genes and their targeting transcription factors. These scores were generated based on an in-house scoring function described in the Methods section. Raw data output 13. The protein-protein interactions between AML key CSC genes with themselves and their targeting transcription factors. This data was generated based on the results of AML microarray and STRING database-based protein-protein interaction data analysis. Raw data output 14. The previously confirmed associations of genes having the highest targeting desirableness and CSC-specific targeting desirableness scores with AML or other cancers’ (stem) cells as well as hematopoietic stem cells. These data were generated based on a PubMed database-based literature mining. Raw data output 15. Drug score of available drugs and bioactive small molecules targeting AML key CSC genes and/or their targeting transcription factors. These scores were generated based on an in-house scoring function described in the Methods section. Raw data output 16. CSC-specific drug score of available drugs and bioactive small molecules targeting AML key CSC genes and/or their targeting transcription factors. These scores were generated based on an in-house scoring function described in the Methods section. Raw data output 17. Candidate drugs for experimental validation. These drugs were selected based on their respective (CSC-specific) drug scores. CSC is the abbreviation of cancer stem cell. Raw data output 18. Detailed information on the samples of the AML microarray dataset GSE30375 used in this study.

  10. f

    Excel spreadsheet containing, in separate sheets, the underlying numerical...

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Aug 21, 2023
    + more versions
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    Min, Jie; Bi, Yuhai; Liu, Wenjun; Li, Yucen; Ye, Xin; Li, Jing; Xu, Ping; Wang, Mingge; Li, Xinda; Li, Huizi (2023). Excel spreadsheet containing, in separate sheets, the underlying numerical data and statistical analysis for Figs panels 1B, 1C, 1F, 1G, 1H, 2C, 2D, 2E, 2F, 3A, 3B, 3D, 3E, 3G, 3H, 3J, 3L, 4C, 4D, 4F, 4G, 4J, 5C, 5D, 5E, 5F, 5G, 5J, 5K, 5L, 5M, 6A, 6B, 6C, 6G, 7A, 7B, 7C, 7H, S1C, S1D, S1E, S2D, S2E, S3A, S3B, S4C, S4E, S6A, S6B, S6D, S7A. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001012627
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    Dataset updated
    Aug 21, 2023
    Authors
    Min, Jie; Bi, Yuhai; Liu, Wenjun; Li, Yucen; Ye, Xin; Li, Jing; Xu, Ping; Wang, Mingge; Li, Xinda; Li, Huizi
    Description

    Excel spreadsheet containing, in separate sheets, the underlying numerical data and statistical analysis for Figs panels 1B, 1C, 1F, 1G, 1H, 2C, 2D, 2E, 2F, 3A, 3B, 3D, 3E, 3G, 3H, 3J, 3L, 4C, 4D, 4F, 4G, 4J, 5C, 5D, 5E, 5F, 5G, 5J, 5K, 5L, 5M, 6A, 6B, 6C, 6G, 7A, 7B, 7C, 7H, S1C, S1D, S1E, S2D, S2E, S3A, S3B, S4C, S4E, S6A, S6B, S6D, S7A.

  11. Bikes Buyer Data Analysis using Excel

    • kaggle.com
    zip
    Updated Aug 12, 2023
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    Ahmed Samir (2023). Bikes Buyer Data Analysis using Excel [Dataset]. https://www.kaggle.com/datasets/ahmedsamir11111/bikes-buyer-data-analysis-using-excel
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    zip(2569195 bytes)Available download formats
    Dataset updated
    Aug 12, 2023
    Authors
    Ahmed Samir
    Description

    In the beginning, the case was just data for a company that did not indicate any useful information that would help decision-makers. In this case, I had to ask questions that could help extract and explore information that would help decision-makers improve and evaluate performance. But before that, I did some operations in the data to help me to analyze it accurately: 1- Understand the data. 2- Clean the data “By power query”. 3- insert some calculation and columns by power query. 4- Analysis to the data and Ask some Questions About Distribution What is the Number of Bikes Sold? What is the most region purchasing bikes? What is the Ave. income by gender & purchasing bikes? The Miles with Purchasing bikes? What is situation to age by purchasing & Count of bikes sold? About Consumer Behavior Home Owner by purchasing? Single or married & Age by purchasing? Having cars by purchasing? Education By purchasing? Occupation By purchasing?

    And I notice the Most Situations Purchasing Bikes is: - North America “Region”. - Commute Distance 0-1 Miles. - The people who are in the middle age and single "169 Bikes". - People that having Bachelor's degree. - The Males who have the average income 60,124$. - People that having Professional occupation. - Home owners “325 Bikes”. - People who having 0 or 1 car. So, I Advise The give those slices more offers to increase the sell value.

  12. f

    Excel spreadsheet containing, in separate sheets, the underlying numerical...

    • datasetcatalog.nlm.nih.gov
    Updated Mar 4, 2024
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    Erkosar, Berra; Rodriguez, Marcelo; Balboa, Victor; López, Ronald; Bohorquez, Laura C.; Rodríguez, Andrea; Fortun, Evelin; Kamoun, Aurélie; García, Andrea; Aruni, José Jorge Chura (2024). Excel spreadsheet containing, in separate sheets, the underlying numerical data and statistical analysis for Figs 2 and S1. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001300179
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    Dataset updated
    Mar 4, 2024
    Authors
    Erkosar, Berra; Rodriguez, Marcelo; Balboa, Victor; López, Ronald; Bohorquez, Laura C.; Rodríguez, Andrea; Fortun, Evelin; Kamoun, Aurélie; García, Andrea; Aruni, José Jorge Chura
    Description

    Excel spreadsheet containing, in separate sheets, the underlying numerical data and statistical analysis for Figs 2 and S1.

  13. Data on Bike Buyers by using MS EXCEL

    • kaggle.com
    zip
    Updated Mar 25, 2022
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    Umasri (2022). Data on Bike Buyers by using MS EXCEL [Dataset]. https://www.kaggle.com/datasets/unica02/data-on-bike-buyers-by-using-ms-excel
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    zip(6808899 bytes)Available download formats
    Dataset updated
    Mar 25, 2022
    Authors
    Umasri
    Description

    The dataset includes customer id,Martial Status,Gender,Income,Children,Education,Occupation,Home Owner,Cars,Commute Distance,Region,Age,Purchased Bike. Blog

  14. f

    Excel spreadsheet containing, in separate sheets, the underlying numerical...

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Jan 2, 2024
    + more versions
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    Alouffi, Abdulaziz; Sun, Xi-Meng; Huang, Jing-Jing; Luo, Ze-Ni; Liu, Sha; Zhu, Xin-Ping; El-Ashram, Saeed; Hao, Chun-Yue; Gu, Yuan; Wu, An-Qi (2024). Excel spreadsheet containing, in separate sheets, the underlying numerical data and statistical analysis for Figs 1B, 1C, 1E, 1F, 1G, 2A, 2B, 3, 4B, 4C, 4D, 4E, 4F, 4G, 5A, 5B, 5C, 5D, 5E, 6A, 6B, 6C, 6D, 8A, 8B, 8C, 8D, 9A, 9B, 9C, 9D, 10A, 10B, 10C, 10D, 10E, 10F, 10G, 10H, 11A, 11B, 11C, S1A, S1B, S1C, S1D, S2A, S2B, S2C, and S2D. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001490867
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    Dataset updated
    Jan 2, 2024
    Authors
    Alouffi, Abdulaziz; Sun, Xi-Meng; Huang, Jing-Jing; Luo, Ze-Ni; Liu, Sha; Zhu, Xin-Ping; El-Ashram, Saeed; Hao, Chun-Yue; Gu, Yuan; Wu, An-Qi
    Description

    Excel spreadsheet containing, in separate sheets, the underlying numerical data and statistical analysis for Figs 1B, 1C, 1E, 1F, 1G, 2A, 2B, 3, 4B, 4C, 4D, 4E, 4F, 4G, 5A, 5B, 5C, 5D, 5E, 6A, 6B, 6C, 6D, 8A, 8B, 8C, 8D, 9A, 9B, 9C, 9D, 10A, 10B, 10C, 10D, 10E, 10F, 10G, 10H, 11A, 11B, 11C, S1A, S1B, S1C, S1D, S2A, S2B, S2C, and S2D.

  15. Dataset for numerical analysis

    • figshare.com
    • data.mendeley.com
    zip
    Updated Nov 28, 2023
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    Shi Chen; Dong Chen; Jyh-Horng Lin (2023). Dataset for numerical analysis [Dataset]. http://doi.org/10.6084/m9.figshare.24648945.v1
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    zipAvailable download formats
    Dataset updated
    Nov 28, 2023
    Dataset provided by
    figshare
    Figsharehttp://figshare.com/
    Authors
    Shi Chen; Dong Chen; Jyh-Horng Lin
    License

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

    Description

    This dataset contains one Excel sheet and five Word documents. In this dataset, Simulation.xlsx describes the parameter values used for the numerical analysis based on empirical data. In this Excel sheet, we calculated the values of each capped call-option model parameter. Computation of Table 2.docx and other documents show the results of the comparative statistics.

  16. Data from: Current and projected research data storage needs of Agricultural...

    • catalog.data.gov
    • agdatacommons.nal.usda.gov
    • +2more
    Updated Apr 21, 2025
    + more versions
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    Agricultural Research Service (2025). Current and projected research data storage needs of Agricultural Research Service researchers in 2016 [Dataset]. https://catalog.data.gov/dataset/current-and-projected-research-data-storage-needs-of-agricultural-research-service-researc-f33da
    Explore at:
    Dataset updated
    Apr 21, 2025
    Dataset provided by
    Agricultural Research Servicehttps://www.ars.usda.gov/
    Description

    The USDA Agricultural Research Service (ARS) recently established SCINet , which consists of a shared high performance computing resource, Ceres, and the dedicated high-speed Internet2 network used to access Ceres. Current and potential SCINet users are using and generating very large datasets so SCINet needs to be provisioned with adequate data storage for their active computing. It is not designed to hold data beyond active research phases. At the same time, the National Agricultural Library has been developing the Ag Data Commons, a research data catalog and repository designed for public data release and professional data curation. Ag Data Commons needs to anticipate the size and nature of data it will be tasked with handling. The ARS Web-enabled Databases Working Group, organized under the SCINet initiative, conducted a study to establish baseline data storage needs and practices, and to make projections that could inform future infrastructure design, purchases, and policies. The SCINet Web-enabled Databases Working Group helped develop the survey which is the basis for an internal report. While the report was for internal use, the survey and resulting data may be generally useful and are being released publicly. From October 24 to November 8, 2016 we administered a 17-question survey (Appendix A) by emailing a Survey Monkey link to all ARS Research Leaders, intending to cover data storage needs of all 1,675 SY (Category 1 and Category 4) scientists. We designed the survey to accommodate either individual researcher responses or group responses. Research Leaders could decide, based on their unit's practices or their management preferences, whether to delegate response to a data management expert in their unit, to all members of their unit, or to themselves collate responses from their unit before reporting in the survey. Larger storage ranges cover vastly different amounts of data so the implications here could be significant depending on whether the true amount is at the lower or higher end of the range. Therefore, we requested more detail from "Big Data users," those 47 respondents who indicated they had more than 10 to 100 TB or over 100 TB total current data (Q5). All other respondents are called "Small Data users." Because not all of these follow-up requests were successful, we used actual follow-up responses to estimate likely responses for those who did not respond. We defined active data as data that would be used within the next six months. All other data would be considered inactive, or archival. To calculate per person storage needs we used the high end of the reported range divided by 1 for an individual response, or by G, the number of individuals in a group response. For Big Data users we used the actual reported values or estimated likely values. Resources in this dataset:Resource Title: Appendix A: ARS data storage survey questions. File Name: Appendix A.pdfResource Description: The full list of questions asked with the possible responses. The survey was not administered using this PDF but the PDF was generated directly from the administered survey using the Print option under Design Survey. Asterisked questions were required. A list of Research Units and their associated codes was provided in a drop down not shown here. Resource Software Recommended: Adobe Acrobat,url: https://get.adobe.com/reader/ Resource Title: CSV of Responses from ARS Researcher Data Storage Survey. File Name: Machine-readable survey response data.csvResource Description: CSV file includes raw responses from the administered survey, as downloaded unfiltered from Survey Monkey, including incomplete responses. Also includes additional classification and calculations to support analysis. Individual email addresses and IP addresses have been removed. This information is that same data as in the Excel spreadsheet (also provided).Resource Title: Responses from ARS Researcher Data Storage Survey. File Name: Data Storage Survey Data for public release.xlsxResource Description: MS Excel worksheet that Includes raw responses from the administered survey, as downloaded unfiltered from Survey Monkey, including incomplete responses. Also includes additional classification and calculations to support analysis. Individual email addresses and IP addresses have been removed.Resource Software Recommended: Microsoft Excel,url: https://products.office.com/en-us/excel

  17. Ad-hoc statistical analysis: October 2019

    • gov.uk
    Updated Oct 28, 2019
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    Department for Digital, Culture, Media & Sport (2019). Ad-hoc statistical analysis: October 2019 [Dataset]. https://www.gov.uk/government/statistical-data-sets/ad-hoc-statistical-analysis-october-2019
    Explore at:
    Dataset updated
    Oct 28, 2019
    Dataset provided by
    GOV.UKhttp://gov.uk/
    Authors
    Department for Digital, Culture, Media & Sport
    Description

    This page lists ad-hoc statistics released October 2019. These are additional analyses not included in any of the Department for Digital, Culture, Media and Sport’s standard publications.

    If you would like any further information please contact evidence@culture.gov.uk.

    October 2019 - Percentage of adults (16+) who have engaged with, or participated in, arts or cultural activity at least three times in the last year (2018/19)

    https://assets.publishing.service.gov.uk/media/600ea5a88fa8f5654da17c00/Percentage_adults_engaged_culture_3_or_more_V2.xlsx">Percentage of adults (16+) who have engaged with, or participated in, arts or cultural activity at least three times in the last year (2018/19)

    MS Excel Spreadsheet, 50.8 KB

    October 2019 - Percentage of adults (16+), youths (11-15) and children (5-10) who have participated in the historic environment in England, 2005/06 to 2018/19

    https://assets.publishing.service.gov.uk/media/600ea5b5d3bf7f05c527c0c7/Taking_Part_-_Indicator_Data_2019_DCMS_V2.xlsx">Percentage of adults (16+), youths (11-15) and children (5-10) who have participated in the historic environment in England, 2005/06 to 2018/19

    MS Excel Spreadsheet, 71.4 KB

  18. 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.

  19. Anonymized Dataset (Excel file)

    • figshare.com
    xlsx
    Updated Aug 21, 2025
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    Samia Arfaoui (2025). Anonymized Dataset (Excel file) [Dataset]. http://doi.org/10.6084/m9.figshare.29958941.v1
    Explore at:
    xlsxAvailable download formats
    Dataset updated
    Aug 21, 2025
    Dataset provided by
    figshare
    Figsharehttp://figshare.com/
    Authors
    Samia Arfaoui
    License

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

    Description

    The dataset consists of the responses collected from 300 pediatric preanesthesia questionnaires, covering medical history, anesthesia history, perinatal information, family history, current treatments, and recent clinical symptoms. It also includes the corresponding physician assessments used as the reference standard, with variables necessary for calculating sensitivity, specificity, predictive values, and Cohen’s kappa agreement. The file is structured in tabular format and was used for all statistical analyses reported in the article. All data have been fully anonymized, with no names, dates of birth, or any other direct identifiers included.

  20. Descriptive statistics and reliability tests.

    • plos.figshare.com
    xls
    Updated Jan 3, 2025
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    Charanjit Kaur; Pei P. Tan; Nurjannah Nurjannah; Ririn Yuniasih (2025). Descriptive statistics and reliability tests. [Dataset]. http://doi.org/10.1371/journal.pone.0312306.t002
    Explore at:
    xlsAvailable download formats
    Dataset updated
    Jan 3, 2025
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Charanjit Kaur; Pei P. Tan; Nurjannah Nurjannah; Ririn Yuniasih
    License

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

    Description

    Data is becoming increasingly ubiquitous today, and data literacy has emerged an essential skill in the workplace. Therefore, it is necessary to equip high school students with data literacy skills in order to prepare them for further learning and future employment. In Indonesia, there is a growing shift towards integrating data literacy in the high school curriculum. As part of a pilot intervention project, academics from two leading Universities organised data literacy boot camps for high school students across various cities in Indonesia. The boot camps aimed at increasing participants’ awareness of the power of analytical and exploration skills, which in turn, would contribute to creating independent and data-literate students. This paper explores student participants’ self-perception of their data literacy as a result of the skills acquired from the boot camps. Qualitative and quantitative data were collected through student surveys and a focus group discussion, and were used to analyse student perception post-intervention. The findings indicate that students became more aware of the usefulness of data literacy and its application in future studies and work after participating in the boot camp. Of the materials delivered at the boot camps, students found the greatest benefit in learning basic statistical concepts and applying them through the use of Microsoft Excel as a tool for basic data analysis. These findings provide valuable policy recommendations that educators and policymakers can use as guidelines for effective data literacy teaching in high schools.

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F. (Fabiano) Dalpiaz (2020). UC_vs_US Statistic Analysis.xlsx [Dataset]. http://doi.org/10.23644/uu.12631628.v1

UC_vs_US Statistic Analysis.xlsx

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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.

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