Abstract

In both theoretical and applied research, it is often of interest to assess the strength of an observed association. This is typically done to allow the judgment of the magnitude of an effect (especially when units of measurement are not meaningful, e.g., in the use of estimated latent variables; Bollen, 1989), to facilitate comparing between predictors’ importance within a given model, or both. Though some indices of effect size, such as the correlation coefficient (itself a standardized covariance coefficient) are readily available, other measures are often harder to obtain. effectsize is an R package (R Core Team, 2020) that fills this important gap, providing utilities for easily estimating a wide variety of standardized effect sizes (i.e., effect sizes that are not tied to the units of measurement of the variables of interest) and their confidence intervals (CIs), from a variety of statistical models. effectsize provides easy-to-use functions, with full documentation and explanation of the various effect sizes offered, and is also used by developers of other R packages as the back-end for effect size computation, such as parameters (Lüdecke et al., 2020), ggstatsplot (Patil, 2018), gtsummary (Sjoberg et al., 2020) and more.

Keywords

EstimationStatisticsMathematicsEconometricsEconomics

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Publication Info

Year
2020
Type
article
Volume
5
Issue
56
Pages
2815-2815
Citations
1641
Access
Closed

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Social media, news, blog, policy document mentions

Citation Metrics

1641
OpenAlex
121
Influential
1413
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Cite This

Mattan S. Ben‐Shachar, Daniel Lüdecke, Dominique Makowski (2020). effectsize: Estimation of Effect Size Indices and Standardized Parameters. The Journal of Open Source Software , 5 (56) , 2815-2815. https://doi.org/10.21105/joss.02815

Identifiers

DOI
10.21105/joss.02815

Data Quality

Data completeness: 81%