The easystats collection of open source R packages was created in 2019 and primarily includes tools dedicated to the post-processing of statistical models.[1][2] As of May 2022, the 10 packages composing the easystats ecosystem have been downloaded more than 8 million times, and have been used in more than 1000 scientific publications.[3][4][5] The ecosystem is the topic of several statistical courses, video tutorials and books.[6][7][8][9][10][11]
Initial release | 2019 |
---|---|
Written in | R |
Operating system | All OS supported by R |
Available in | English |
Type | Statistical software |
License | GPL-3.0 |
Website | github |
The aim of easystats is to provide a unifying and consistent framework to understand and report statistical results. It is also compatible with other collections of packages, such as the tidyverse. Notable design characteristics include its API, with a particular attention given to the names of functions and arguments (e.g., avoiding acronyms and abbreviations), and its low number of dependencies.[2][better source needed]
History
editIn 2019, Dominique Makowski contacted software developer Daniel Lüdecke with the idea to collaborate around a collection of R packages aiming at facilitating data science for users without a statistical or computer science background. The first package of easystats, insight was created in 2019, and was envisioned as the foundation of the ecosystem.[1] The second package that emerged, bayestestR, benefitted from the joining of Bayesian expert Mattan S. Ben-Shachar. Other maintainers include Indrajeet Patil, Brenton M. Wiernik, Etienne Bacher, and Rémi Thériault.[12]
The easystats collection of packages as a whole received the 2023 Award from the Society for the Improvement of Psychological Science (SIPS).[13]
Packages
editThe easystats ecosystem contains ten semi-independent packages.
- insight: This package serves as the foundation of the ecosystem as it allows manipulating objects from different R packages.[14]
- datawizard: This package implements some core data manipulation features.[15]
- bayestestR: This package provides utilities to work with Bayesian statistics.[16] The package received a Commendation award by the Society for the Improvement of Psychological Science (SIPS) in 2020.[17]
- correlation: This package is dedicated to running correlation analyses.[18]
- performance: This package allows the extraction of metrics of model performance.[19]
- effectsize: This packages computes indices of effect size and standardized parameters.[20]
- parameters: This package centres around the analysis of the parameters of a statistical model.[21]
- modelbased: This package computes model-based predictions, group averages and contrasts.
- see: This package interfaces with ggplot2 to create visual plots.[22]
- report: This package implements an automated reporting of statistical models.
See also
editReferences
edit- ^ a b "easystats: one year already. What's next?". r-bloggers. 23 January 2020. Retrieved 14 January 2022.
- ^ a b "easystats". GitHub. 14 January 2022. Retrieved 14 January 2022.
- ^ "easystats Downloads". GitHub. 14 January 2022. Retrieved 14 January 2022.
- ^ "Project "easystats"". ResearchGate. Retrieved 16 January 2022.
- ^ "Dominique Makowski's Google Scholar Profile". scholar.google.fr.
- ^ "easystats: Quickly investigate model performance". Business Science. 13 July 2021. Retrieved 17 January 2022.
- ^ "Automate Textual Reports of Statistical Models in R! report / easystats". YouTube. Retrieved 17 January 2022.
- ^ Field, Andy P. (2012). Discovering statistics using R. Thousand Oaks, California. ISBN 978-1446200469.
{{cite book}}
: CS1 maint: location missing publisher (link) - ^ "Analyse des corrélations avec easystats". rzine.fr. Retrieved 17 January 2022.
- ^ Kennedy, Ryan (2021). Introduction to R for social scientists a Tidy programming approach. Boca Raton. ISBN 9781000353877.
{{cite book}}
: CS1 maint: location missing publisher (link) - ^ Monkman, Martin. "Data Science with R: A Resource Compendium". Retrieved 18 May 2022.
- ^ "easystats Authors". GitHub. 11 November 2024. Retrieved 11 November 2024.
- ^ "SIPS 2023 Awards Announced!". improvingpsych. 22 August 2023. Retrieved 29 September 2023.
- ^ Lüdecke, Daniel; Waggoner, Philip D.; Makowski, Dominique (25 June 2019). "insight: A Unified Interface to Access Information from Model Objects in R". Journal of Open Source Software. 4 (38): 1412. Bibcode:2019JOSS....4.1412L. doi:10.21105/joss.01412. S2CID 198640623.
- ^ Patil, Indrajeet; Makowski, Dominique; Ben-Shachar, Mattan S.; Wiernik, Brenton M.; Bacher, Etienne; Lüdecke, Daniel (9 October 2022). "datawizard: An R Package for Easy Data Preparation and Statistical Transformations" (PDF). Journal of Open Source Software. 7 (78): 4684. doi:10.21105/joss.04684. Retrieved 29 September 2023.
- ^ Makowski, Dominique; Ben-Shachar, Mattan; Lüdecke, Daniel (13 August 2019). "bayestestR: Describing Effects and their Uncertainty, Existence and Significance within the Bayesian Framework". Journal of Open Source Software. 4 (40): 1541. Bibcode:2019JOSS....4.1541M. doi:10.21105/joss.01541. S2CID 201882316.
- ^ "SIPS Awards". Retrieved 21 August 2022.
- ^ Makowski, Dominique; Ben-Shachar, Mattan; Patil, Indrajeet; Lüdecke, Daniel (16 July 2020). "Methods and Algorithms for Correlation Analysis in R". Journal of Open Source Software. 5 (51): 2306. Bibcode:2020JOSS....5.2306M. doi:10.21105/joss.02306. S2CID 225530918.
- ^ Lüdecke, Daniel; Ben-Shachar, Mattan; Patil, Indrajeet; Waggoner, Philip; Makowski, Dominique (21 April 2021). "performance: An R Package for Assessment, Comparison and Testing of Statistical Models". Journal of Open Source Software. 6 (60): 3139. Bibcode:2021JOSS....6.3139L. doi:10.21105/joss.03139. S2CID 233378359.
- ^ Ben-Shachar, Mattan; Lüdecke, Daniel; Makowski, Dominique (23 December 2020). "effectsize: Estimation of Effect Size Indices and Standardized Parameters". Journal of Open Source Software. 5 (56): 2815. Bibcode:2020JOSS....5.2815B. doi:10.21105/joss.02815. S2CID 229576898.
- ^ Lüdecke, Daniel; Ben-Shachar, Mattan; Patil, Indrajeet; Makowski, Dominique (9 September 2020). "Extracting, Computing and Exploring the Parameters of Statistical Models using R". Journal of Open Source Software. 5 (53): 2445. Bibcode:2020JOSS....5.2445L. doi:10.21105/joss.02445. S2CID 225319884.
- ^ Lüdecke, Daniel; Patil, Indrajeet; Ben-Shachar, Mattan S.; Wiernik, Brenton M.; Waggoner, Philip; Makowski, Dominique (6 August 2021). "see: An R Package for Visualizing Statistical Models". Journal of Open Source Software. 6 (64): 3393. Bibcode:2021JOSS....6.3393L. doi:10.21105/joss.03393. S2CID 238778250.