因果关系(物理学)
因果推理
规范性
推论
归属
概率逻辑
因果推理
心理表征
心理学
代表(政治)
叙述的
认知科学
机制(生物学)
因果模型
认知心理学
认识论
认知
计算机科学
社会心理学
人工智能
病理
经济
政治学
量子力学
计量经济学
物理
法学
政治
语言学
哲学
医学
神经科学
作者
Steven A. Sloman,David A. Lagnado
标识
DOI:10.1146/annurev-psych-010814-015135
摘要
Causal knowledge plays a crucial role in human thought, but the nature of causal representation and inference remains a puzzle. Can human causal inference be captured by relations of probabilistic dependency, or does it draw on richer forms of representation? This article explores this question by reviewing research in reasoning, decision making, various forms of judgment, and attribution. We endorse causal Bayesian networks as the best normative framework and as a productive guide to theory building. However, it is incomplete as an account of causal thinking. On the basis of a range of experimental work, we identify three hallmarks of causal reasoning—the role of mechanism, narrative, and mental simulation—all of which go beyond mere probabilistic knowledge. We propose that the hallmarks are closely related. Mental simulations are representations over time of mechanisms. When multiple actors are involved, these simulations are aggregated into narratives.
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