2021
DOI: 10.3758/s13428-021-01596-4
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A logical framework to study concept-learning biases in the presence of multiple explanations

Abstract: When people seek to understand concepts from an incomplete set of examples and counterexamples, there is usually an exponentially large number of classification rules that can correctly classify the observed data, depending on which features of the examples are used to construct these rules. A mechanistic approximation of human concept-learning should help to explain how humans prefer some rules over others when there are many that can be used to correctly classify the observed data. Here, we exploit the tools… Show more

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