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Does Taking a More Holistic View of Personality Improve its Predictive Utility? A Comparison Multiple Regression, Fuzzy Cluster Analysis, and Indirect Mixture Modeling for Predicting Leadership Effectiveness.

机译:从整体角度看待人格会提高其预测效用吗?比较多元回归,模​​糊聚类分析和间接混合建模以预测领导力有效性。

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摘要

When using personality to predict leadership outcomes, researchers typically use either bivariate correlations or additive, linear multiple regression models. Recently, however, some researchers have suggested that the relationship between personality and leadership may be more complex than typically represented in the literature. The purpose of the current study was to evaluate the predictive utility of two under-utilized statistical modeling techniques that take a holistic approach to modeling the personality-leadership relationship -- fuzzy cluster analysis and indirect mixture modeling. These statistical techniques were applied to an archival data set containing personality and leadership effectiveness information for 619 department managers at a grocery chain in the United States. Using this data, four statistical models were tested and compared in terms of their overall fit, predictive validity, and generalizability: (1) a traditional main-effects only multiple regression model, (2) a regression model that includes theoretically relevant interactions and nonlinear effects, (3) fuzzy cluster analysis, and (4) indirect mixture modeling. Results indicated that although indirect mixture modeling outperformed both multiple regression and fuzzy cluster analysis across all four leadership criteria in the development sample, this technique experienced the most shrinkage in the validation sample. In contrast, the main-effects multiple regression models explained a small, but significant amount of variance in the leadership effectiveness outcomes, the magnitudes of which were stable across samples.
机译:当使用人格来预测领导力结果时,研究人员通常使用双变量相关或加性线性多元回归模型。然而,最近,一些研究人员建议,人格与领导力之间的关系可能比文献中通常所代表的更为复杂。本研究的目的是评估两种未充分利用的统计建模技术的预测效用,这些技术采用整体方法来建模人格-领导力关系-模糊聚类分析和间接混合建模。这些统计技术已应用于包含美国杂货店链中619名部门经理的人格和领导效能信息的档案数据集。使用此数据,测试并比较了四个统计模型的总体拟合度,预测效度和可概括性:(1)仅传统主效应的多元回归模型;(2)包括理论上相关的相互作用和非线性的回归模型效果,(3)模糊聚类分析和(4)间接混合建模。结果表明,尽管在开发样本中的所有四个领导标准上,间接混合物建模均优于多元回归和模糊聚类分析,但该技术在验证样本中的收缩最大。相比之下,主效应多元回归模型解释了领导有效性结果中的一个很小但相当大的方差,其大小在各个样本中都是稳定的。

著录项

  • 作者

    Yost, Allison Brown.;

  • 作者单位

    The George Washington University.;

  • 授予单位 The George Washington University.;
  • 学科 Psychology Psychometrics.;Psychology Industrial.;Psychology Personality.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 222 p.
  • 总页数 222
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:54:07

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