Yngwie Asbjørn Nielsen, Stefan Pfattheicher, Isabel Thielmann
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引用次数: 0
摘要
解释亲社会行为是经典和当代行为科学的核心目标。在这里,我们首次应用现代机器学习技术来揭示人格特质对亲社会行为的全部预测潜力。我们利用大规模数据集(N = 2707;81 种人格特质)和最先进的统计模型来预测亲社会行为的激励措施--社会价值取向(SVO)。我们得出以下结论(1) 特质解释了 SVO 中 13.9% 的变异;(2) 线性模型足以获得良好的预测效果;(3) 特质与特质之间的交互作用不会提高预测效果;(4) 狭义特质提高了基本人格(即 HEXACO)之外的预测效果;(5) 特质与特质之间的交互作用不会提高预测效果;(6) 特质与特质之间的交互作用不会提高预测效果、(5)特质的单变量预测能力与其多变量预测能力之间存在适度关联,这表明单变量估计值(如皮尔逊相关性)可以作为多变量重要性的有用替代。我们认为,非线性模型的有限实用性可能源于当前人格科学的测量实践,即倾向于线性相关的建构。总之,我们的研究为人格如何预测 SVO 提供了一个基准,并为更好地预测亲社会行为指明了方向。
How much can personality predict prosocial behavior?
Explaining prosocial behavior is a central goal in classic and contemporary behavioral science. Here, for the first time, we apply modern machine learning techniques to uncover the full predictive potential that personality traits have for prosocial behavior. We utilize a large-scale dataset ( N = 2707; 81 personality traits) and state-of-the-art statistical models to predict an incentivized measure of prosocial behavior, Social Value Orientation (SVO). We conclude: (1) traits explain 13.9% of the variance in SVO; (2) linear models are sufficient to obtain good prediction; (3) trait–trait interactions do not improve prediction; (4) narrow traits improve prediction beyond basic personality (i.e., the HEXACO); (5) there is a moderate association between the univariate predictive power of a trait and its multivariate predictive power, suggesting that univariate estimates (e.g., Pearson’s correlation) can serve as a useful proxy for multivariate variable importance. We propose that the limited usefulness of nonlinear models may stem from current measurement practices in personality science, which tend to favor linearly related constructs. Overall, our study provides a benchmark for how well personality predicts SVO and charts a course toward better prediction of prosocial behavior.
期刊介绍:
ACS Applied Electronic Materials is an interdisciplinary journal publishing original research covering all aspects of electronic materials. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials science, engineering, optics, physics, and chemistry into important applications of electronic materials. Sample research topics that span the journal's scope are inorganic, organic, ionic and polymeric materials with properties that include conducting, semiconducting, superconducting, insulating, dielectric, magnetic, optoelectronic, piezoelectric, ferroelectric and thermoelectric.
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