Optimal Teaching for Limited-Capacity Human Learners
Patil, Kaustubh R., Zhu, Jerry, Kopeć, Łukasz, Love, Bradley C.
–Neural Information Processing Systems
Basic decisions, such as judging a person as a friend or foe, involve categorizing novel stimuli. Recent work finds that people's category judgments are guided by a small set of examples that are retrieved from memory at decision time. This limited and stochastic retrieval places limits on human performance for probabilistic classification decisions. In light of this capacity limitation, recent work finds that idealizing training items, such that the saliency of ambiguous cases is reduced, improves human performance on novel test items. One shortcoming of previous work in idealization is that category distributions were idealized in an ad hoc or heuristic fashion.
Neural Information Processing Systems
Feb-14-2020, 09:57:47 GMT
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