贝叶斯定理
因果推理
因果模型
贝叶斯网络
人工智能
因果推理
因果结构
因果决策理论
机器学习
推论
认知
计算机科学
形式主义(音乐)
图形模型
认知心理学
认知科学
心理学
贝叶斯概率
数学
计量经济学
统计
视觉艺术
艺术
决策工程
物理
神经科学
决策支持系统
商业决策图
量子力学
音乐剧
作者
Alison Gopnik,Clark Glymour,David M. Sobel,Laura Schulz,Tamar Kushnir,David Danks
出处
期刊:Psychological Review
[American Psychological Association]
日期:2004-01-01
卷期号:111 (1): 3-32
被引量:1229
标识
DOI:10.1037/0033-295x.111.1.3
摘要
The authors outline a cognitive and computational account of causal learning in children. They propose that children use specialized cognitive systems that allow them to recover an accurate "causal map" of the world: an abstract, coherent, learned representation of the causal relations among events. This kind of knowledge can be perspicuously understood in terms of the formalism of directed graphical causal models, or Bayes nets. Children's causal learning and inference may involve computations similar to those for learning causal Bayes nets and for predicting with them. Experimental results suggest that 2- to 4-year-old children construct new causal maps and that their learning is consistent with the Bayes net formalism.
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