Combining theoretical modelling and machine learning approaches: The case of teamwork effects on individual effort expenditure

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Simon Eisbach , Oliver Mai , Guido Hertel
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引用次数: 0

Abstract

Machine learning modelling of psychological processes is often considered as competing alternative to theoretical modelling. In contrast, the current study explores potential synergetic effects of these two general approaches both for predictive accuracy and theoretical understanding. Theoretical models have high explanatory value but can have weak predictive power. Machine learning models have high predictive power but low transparency and require large amounts of data and computational power. The combination of machine learning and theoretical models may yield both higher predictive accuracy as well as higher explanatory value and lower requirements of data and computational power as compared to either of the two approaches alone. We examine our assumptions in the field of team motivation, using archival performance data from 1,425,926 individual and relay races of swimming competitions. While the results revealed better prediction of the machine learning model, an exploration of the machine learning model with explainable artificial intelligence methods offered new insights also for the theoretical model. Finally, the combination of machine learning and theoretical modelling required less computational power than the machine learning approach alone, but not less data for building the model.

理论建模与机器学习方法的结合:团队合作对个人努力支出的影响案例
心理过程的机器学习建模通常被认为是理论建模的竞争性替代方案。相比之下,本研究探讨了这两种通用方法在预测准确性和理论理解方面的潜在协同效应。理论模型具有很高的解释价值,但预测能力较弱。机器学习模型预测能力强,但透明度低,需要大量数据和计算能力。机器学习模型和理论模型的结合可能会产生更高的预测准确性以及更高的解释价值,而且对数据和计算能力的要求比单独使用这两种方法中的任何一种都要低。我们利用 1,425,926 场游泳比赛的个人和接力赛的档案数据,在团队激励领域检验了我们的假设。结果表明,机器学习模型的预测效果更好,而利用可解释人工智能方法对机器学习模型进行的探索也为理论模型提供了新的见解。最后,机器学习与理论建模相结合所需的计算能力低于单独使用机器学习方法,但用于建立模型的数据却没有减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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