Dynamical trajectories in category learning

被引:0
作者
Shawn W. Ell
F. Gregory Ashby
机构
[1] University of California,Psychology Department
来源
Perception & Psychophysics | 2004年 / 66卷
关键词
Gradient Descent; Confidence Region; Category Structure; Decision Bound; Category Learning;
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中图分类号
学科分类号
摘要
Category learning has traditionally been studied by examining how percentage correct changes with experience (i.e., in the form of learning curves). An alternative and more powerful approach is to examine dynamical learning trajectories — that is, to examine how the parameters that describe the current state of the model change with experience. We describe results from a new experimental paradigm in which empirical-learning trajectories are directly observable. In these experiments, participants learned two categories of spatial position, and they were constrained to identify and use a linear decision bound on every trial. The dependent variables of principal interest were the slope and the intercept of the bound used on each trial. Data from two experiments supported the following conclusions. (1) Gradient descent provided a poor description of the empirical trajectories. (2) The magnitude of changes in decision strategy decreased with experience at a rate that was faster than that predicted by gradient descent. (3) Learning curves suffered from substantial identifiability problems.
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页码:1318 / 1340
页数:22
相关论文
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