概化理论
生成语法
一般化
计算机科学
数据科学
跨文化
基础(证据)
光学(聚焦)
因果推理
管理科学
心理学
人工智能
机器学习
认知心理学
计量经济学
认识论
社会学
数学
地理
经济
考古
哲学
发展心理学
物理
光学
人类学
作者
Dominik Deffner,Julia M. Rohrer,Richard McElreath
标识
DOI:10.31234/osf.io/fqukp
摘要
Behavioral researchers increasingly recognize the need for more diverse samples that capture the breadth of human experience. Current attempts to establish generalizability across populations focus on threats to validity, constraints on generalization and the accumulation of large cross-cultural datasets. But for continued progress, we also require a framework that lets us determine which inferences can be drawn and how to make informative cross-cultural comparisons. We describe a generative causal modeling framework and outline simple graphical criteria to derive analytic strategies and implied generalizations. Using both simulated and real data, we demonstrate how to project and compare estimates across populations. We conclude with a discussion of how a formal framework for generalizability can assist researchers in designing more informative cross-cultural studies and thus provides a more solid foundation for cumulative and generalizable behavioral research.
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