The helpfulness of category labels in semi-supervised learning depends on category structure

被引:0
|
作者
Wai Keen Vong
Daniel J. Navarro
Andrew Perfors
机构
[1] University of Adelaide,School of Psychology
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关键词
Category learning; Computational modeling; Semi-supervised learning;
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摘要
The study of semi-supervised category learning has generally focused on how additional unlabeled information with given labeled information might benefit category learning. The literature is also somewhat contradictory, sometimes appearing to show a benefit to unlabeled information and sometimes not. In this paper, we frame the problem differently, focusing on when labels might be helpful to a learner who has access to lots of unlabeled information. Using an unconstrained free-sorting categorization experiment, we show that labels are useful to participants only when the category structure is ambiguous and that people’s responses are driven by the specific set of labels they see. We present an extension of Anderson’s Rational Model of Categorization that captures this effect.
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页码:230 / 238
页数:8
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