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首页> 外文期刊>Collabra: Psychology >A Practical Illustration of Methods to Deal with Potential Outliers: A Multiverse Outlier Analysis of Study 3 from Brummelman, Thomaes, Orobio de Castro, Overbeek, and Bushman (2014)
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A Practical Illustration of Methods to Deal with Potential Outliers: A Multiverse Outlier Analysis of Study 3 from Brummelman, Thomaes, Orobio de Castro, Overbeek, and Bushman (2014)

机译:处理潜在异常值的方法的实践例证:来自Brummelman,Thomaes,Orobio de Castro,Overbeek和Bushman的研究3的多元异常值分析(2014)

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p class="p1"Recently, Brummelman, Thomaes, Orobio de Castro, Overbeek, and Bushman (2014: Study 3) demonstrated that inflated praise benefits challenge seeking of children with high self-esteem, but harms challenge seeking of children with low self-esteem. In the present paper, we examined the original data set on model-fit and prediction outliers according to various reasonable criteria and norms. Subsequently, we carried out a multiverse outlier re-analysis on the data of Brummelman and colleagues’ Study 3, employing the same analytical approach as the original authors did but excluding outliers. Out of the twelve re-analyses in the multiverse, six demonstrated that removing only a small number of outliers rendered the originally reported crucial interaction effect between self-esteem and type of praise non-significant and produced a sizeable reduction of the effect size. The present paper illustrates the use of reporting outlier analyses, which lies in allowing a critical evaluation of the empirical evidence and offering a more complete picture that enhances future studies in the field./p.
机译:class =“ p1”>最近,Brummelman,Thomaes,Orobio de Castro,Overbeek和Bushman(2014年:研究3)证明,夸大赞美会给自尊心高的孩子带来挑战,但会伤害到有自尊心的孩子。自卑。在本文中,我们根据各种合理的标准和规范检查了模型拟合和预测离群值的原始数据集。随后,我们使用与原始作者相同的分析方法,对Brummelman及其同事的研究3的数据进行了多区域离群值重新分析,但排除了离群值。在多元宇宙的十二项重新分析中,六项表明,仅除去少量的异常值,就使原先报道的自尊与表扬类型之间的关键相互作用效应变得不显着,并且显着降低了效应量。本文说明了报告异常值分析的用途,该方法允许对经验证据进行严格的评估,并提供更完整的图景,以增强该领域的未来研究。

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