Yamauchi Takashi, Love Bradley C, Markman Arthur B
Department of Psychology, Texas A&M University, College Station 77843, USA.
J Exp Psychol Learn Mem Cogn. 2002 May;28(3):585-93. doi: 10.1037//0278-7393.28.3.585.
Previous research suggests that learning categories by classifying new instances highlights information that is useful for discriminating between categories. In contrast, learning categories by making predictive inferences focuses learners on an abstract summary of each category (e.g., the prototype). To test this characterization of classification and inference learning further, the authors evaluated the two learning procedures with nonlinearly separable categories. In contrast to previous research involving cohesive, linearly separable categories, the authors found that it is more difficult to learn nonlinearly separable categories by making inferences about features than it is to learn them by classifying instances. This finding reflects that the prototype of a nonlinearly separable category does not provide a good summary of the category members. The results from this study suggest that having a cohesive category structure is more important for inference than it is for classification.
先前的研究表明,通过对新实例进行分类来学习类别会突出有助于区分不同类别的信息。相比之下,通过进行预测性推理来学习类别会使学习者专注于每个类别的抽象概括(例如原型)。为了进一步检验这种分类和推理学习的特征描述,作者用非线性可分的类别评估了这两种学习程序。与先前涉及连贯的、线性可分的类别的研究不同,作者发现通过对特征进行推理来学习非线性可分的类别比通过对实例进行分类来学习更困难。这一发现反映出非线性可分类别的原型并不能很好地概括类别成员。这项研究的结果表明,具有连贯的类别结构对推理比对分类更重要。