可解释性
概化理论
心理学
计算模型
心理科学
人格
背景(考古学)
光学(聚焦)
数据科学
认知
认知科学
人工智能
计算社会学
大数据
社会神经科学
认知心理学
社会认知
计算机科学
社会心理学
数据挖掘
神经科学
古生物学
发展心理学
物理
光学
生物
作者
Sidney K. D’Mello,Louis Tay,Rosy Southwell
标识
DOI:10.1177/09637214211056906
摘要
Psychological science can benefit from and contribute to emerging approaches from the computing and information sciences driven by the availability of real-world data and advances in sensing and computing. We focus on one such approach, machine-learned computational models (MLCMs)—computer programs learned from data, typically with human supervision. We introduce MLCMs and discuss how they contrast with traditional computational models and assessment in the psychological sciences. Examples of MLCMs from cognitive and affective science, neuroscience, education, organizational psychology, and personality and social psychology are provided. We consider the accuracy and generalizability of MLCM-based measures, cautioning researchers to consider the underlying context and intended use when interpreting their performance. We conclude that in addition to known data privacy and security concerns, the use of MLCMs entails a reconceptualization of fairness, bias, interpretability, and responsible use.
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