Lee Michael D, Navarro Daniel J
Department of Psychology, University of Adelaide, SA, Australia.
Psychon Bull Rev. 2002 Mar;9(1):43-58. doi: 10.3758/bf03196256.
The ALCOVE model of category learning, despite its considerable success in accounting for human performance across a wide range of empirical tasks, is limited by its reliance on spatial stimulus representations. Some stimulus domains are better suited to featural representation, characterizing stimuli in terms of the presence or absence of discrete features, rather than as points in a multidimensional space. We report on empirical data measuring human categorization performance across a featural stimulus domain and show that ALCOVE is unable to capture fundamental qualitative aspects of this performance. In response, a featural version of the ALCOVE model is developed, replacing the spatial stimulus representations that are usually generated by multidimensional scaling with featural representations generated by additive clustering. We demonstrate that this featural version of ALCOVE is able to capture human performance where the spatial model failed, explaining the difference in terms of the contrasting representational assumptions made by the two approaches. Finally, we discuss ways in which the ALCOVE categorization model might be extended further to use "hybrid" representational structures combining spatial and featural components.
范畴学习的ALCOVE模型尽管在解释人类在广泛实证任务中的表现方面取得了相当大的成功,但因其对空间刺激表征的依赖而受到限制。一些刺激领域更适合特征表征,即根据离散特征的存在与否来描述刺激,而不是将其作为多维空间中的点。我们报告了在一个特征刺激领域测量人类分类表现的实证数据,并表明ALCOVE无法捕捉这种表现的基本定性方面。作为回应,我们开发了ALCOVE模型的特征版本,用加法聚类生成的特征表征取代了通常由多维缩放生成的空间刺激表征。我们证明,当空间模型失败时,这种特征版本的ALCOVE能够捕捉人类表现,并根据两种方法所做的对比表征假设来解释这种差异。最后,我们讨论了进一步扩展ALCOVE分类模型以使用结合空间和特征成分的“混合”表征结构的方法。