Observation versus classification in supervised category learning

被引:0
|
作者
Kimery R. Levering
Kenneth J. Kurtz
机构
[1] Binghamton University,Department of Psychology
[2] Marist College,Department of Psychology
来源
Memory & Cognition | 2015年 / 43卷
关键词
Categorization; Concepts; Generative versus discriminative; Category learning modes; Classification learning; Supervised observational learning;
D O I
暂无
中图分类号
学科分类号
摘要
The traditional supervised classification paradigm encourages learners to acquire only the knowledge needed to predict category membership (a discriminative approach). An alternative that aligns with important aspects of real-world concept formation is learning with a broader focus to acquire knowledge of the internal structure of each category (a generative approach). Our work addresses the impact of a particular component of the traditional classification task: the guess-and-correct cycle. We compare classification learning to a supervised observational learning task in which learners are shown labeled examples but make no classification response. The goals of this work sit at two levels: (1) testing for differences in the nature of the category representations that arise from two basic learning modes; and (2) evaluating the generative/discriminative continuum as a theoretical tool for understand learning modes and their outcomes. Specifically, we view the guess-and-correct cycle as consistent with a more discriminative approach and therefore expected it to lead to narrower category knowledge. Across two experiments, the observational mode led to greater sensitivity to distributional properties of features and correlations between features. We conclude that a relatively subtle procedural difference in supervised category learning substantially impacts what learners come to know about the categories. The results demonstrate the value of the generative/discriminative continuum as a tool for advancing the psychology of category learning and also provide a valuable constraint for formal models and associated theories.
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页码:266 / 282
页数:16
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