Nosofsky R M
J Exp Psychol Gen. 1986 Mar;115(1):39-61. doi: 10.1037//0096-3445.115.1.39.
A unified quantitative approach to modeling subjects' identification and categorization of multidimensional perceptual stimuli is proposed and tested. Two subjects identified and categorized the same set of perceptually confusable stimuli varying on separable dimensions. The identification data were modeled using Shepard's (1957) multidimensional scaling-choice framework. This framework was then extended to model the subjects' categorization performance. The categorization model, which generalizes the context theory of classification developed by Medin and Schaffer (1978), assumes that subjects store category exemplars in memory. Classification decisions are based on the similarity of stimuli to the stored exemplars. It is assumed that the same multidimensional perceptual representation underlies performance in both the identification and categorization paradigms. However, because of the influence of selective attention, similarity relationships change systematically across the two paradigms. Some support was gained for the hypothesis that subjects distribute attention among component dimensions so as to optimize categorization performance. Evidence was also obtained that subjects may have augmented their category representations with inferred exemplars. Implications of the results for theories of multidimensional scaling and categorization are discussed.
本文提出并测试了一种统一的定量方法,用于对受试者对多维感知刺激的识别和分类进行建模。两名受试者对同一组在可分离维度上变化的、在感知上容易混淆的刺激进行了识别和分类。识别数据使用谢泼德(1957年)的多维标度选择框架进行建模。然后扩展该框架以对受试者的分类表现进行建模。该分类模型推广了梅丁和谢弗(1978年)提出的分类情境理论,假设受试者在记忆中存储类别范例。分类决策基于刺激与存储范例的相似性。假设在识别和分类范式中的表现都基于相同的多维感知表征。然而,由于选择性注意的影响,相似性关系在两种范式中会系统地变化。有一些证据支持这样的假设,即受试者在各个组成维度之间分配注意力,以优化分类表现。还获得了证据表明受试者可能用推断出的范例增强了他们的类别表征。讨论了这些结果对多维标度和分类理论的影响。