Nosofsky R M
J Exp Psychol Learn Mem Cogn. 1987 Jan;13(1):87-108. doi: 10.1037//0278-7393.13.1.87.
The relationship between subjects' identification and categorization learning of integral-dimension stimuli was studied within the framework of an exemplar-based generalization model. The model was used to predict subjects' learning in six different categorization conditions on the basis of data obtained in a single identification learning condition. A crucial assumption in the model is that because of selective attention to component dimensions, similarity relations may change in systematic ways across different experimental contexts. The theoretical analysis provided evidence that, at least under unspeeded conditions, selective attention may play a critical role in determining the identification-categorization relationship for integral stimuli. Evidence was also provided that similarity among exemplars decreased as a function of identification learning. Various alternative classification models, including prototype, multiple-prototype, average distance, and "value-on-dimensions" models, were unable to account for the results.
在基于范例的泛化模型框架内,研究了被试对整体维度刺激的识别与分类学习之间的关系。该模型用于根据在单一识别学习条件下获得的数据,预测被试在六种不同分类条件下的学习情况。该模型的一个关键假设是,由于对组成维度的选择性注意,相似性关系可能会在不同的实验情境中以系统的方式发生变化。理论分析提供了证据,表明至少在无时间限制的条件下,选择性注意可能在确定整体刺激的识别-分类关系中起关键作用。还提供了证据表明,范例之间的相似性随着识别学习而降低。包括原型、多原型、平均距离和“维度值”模型在内的各种替代分类模型都无法解释这些结果。