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Why Learning Can Be Hard: Preschooler's Causal Inferences

机译:为什么学习可能很难:学龄前儿主的因果推论

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Human intelligence has long inspired new benchmarks for research in artificial intelligence. However, recently, research in machine learning and AI has influenced research on children's learning. In particular, Bayesian frameworks capture hallmarks of children's causal reasoning: given causally ambiguous evidence, prior beliefs and data interact. However, we suggest that the rational frameworks that support rapid, accurate causal learning can actually lead children to generate and maintain incorrect beliefs. In this paper we present three studies demonstrating these surprising misunderstandings in children and show how these errors in fact reflect sophisticated inferences.
机译:人类智慧对人工智能研究的研究已经长期启发了新的基准。然而,最近,机器学习和AI的研究影响了儿童学习的研究。特别是,贝叶斯框架捕获儿童因果关系的标志:给予因果暧昧的证据,先前的信仰和数据互动。然而,我们建议支持快速,准确的因果学习的理性框架实际上可以导致儿童产生并保持不正确的信念。在本文中,我们提出了三项研究,证明了儿童的令人惊讶的误解,并展示了事实上的这些错误是如何反映复杂的推论。

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