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Online learning of symbolic concepts

机译:在线学习符号概念

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摘要

Learning complex symbolic concepts requires a rich hypothesis space, but exploring such spaces is intractable. We describe how sampling algorithms can be brought to bear on this problem, leading to the prediction that humans will exhibit the same failure modes as sampling algorithms. In particular, we show that humans get stuck in "garden paths" initially promising hypotheses that turn out to be sub-optimal in light of subsequent data. Susceptibility to garden paths is sensitive to the availability of cognitive resources. These phenomena are well-explained by a Bayesian model in which humans stochastically update a sample-based representation of the posterior over a compositional hypothesis space. Our model provides a framework for understanding "bounded rationality" in symbolic concept learning. (C) 2017 Elsevier Inc. All rights reserved.
机译:学习复杂的符号概念需要丰富的假设空间,但探索这样的空间很难。我们描述了采样算法如何处理这个问题,从而预测人类将表现出与采样算法相同的故障模式。特别是,我们发现人类被困在“花园小径”中,最初有希望的假设在随后的数据中被证明是次优的。对花园路径的敏感性对认知资源的可用性敏感。贝叶斯模型很好地解释了这些现象,在该模型中,人类在成分假设空间上随机更新基于样本的后验表示。我们的模型为理解符号概念学习中的“有限理性”提供了一个框架。(C) 2017爱思唯尔公司版权所有。

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