Effect size indices are useful parameters that quantify the strength of association and are unaffected by sample size. There are many available effect size parameters and estimators, but it is difficult to compare effect sizes across studies as most are defined for a specific type of population parameter. We recently introduced a new Robust Effect Size Index (RESI) and confidence interval, which is advantageous because it is not model-specific. Here we present the RESI R package, which makes it easy to report the RESI and its confidence interval for many different model classes, with a consistent interpretation across parameters and model types. The package produces coefficient, ANOVA tables, and overall Wald tests for model inputs, appending the RESI estimate and confidence interval to each. The package also includes functions for visualization and conversions to and from other effect size measures. For illustration, we analyze and interpret three different model types.
翻译:影响大小指数是量化关联强度的有用参数,不受样本大小的影响。有许多现有影响大小参数和估计符,但很难比较不同研究的影响大小,因为大多数研究都是针对特定人口参数定义的。我们最近采用了一个新的强效大小指数和信任区隔,因为它不针对具体模型,因此比较有利。这里我们介绍RESI RS 软件包,这样很容易报告许多不同模型类别的RESI及其信任区隔,并有不同参数和模型类型的一致解释。软件包产生了系数、ANOVA表格和用于模型输入的总体Wald测试,同时附上RESI的估计和信任区隔。软件包还包含可视化功能以及从其他影响大小计量转换到其他功能。例如,我们分析并解释三种不同的模型类型。</s>