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The Necessity of Machine Learning and Epistemology in the Development of Categorization Theories: A Case Study in Prototype-Exemplar Debate

机译:机器学习和认识论在分类理论发展中的必要性:以原型-样例辩论为例

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In the present paper we discuss some aspects of the development of categorization theories concerning cognitive psychology and machine learning. We consider the thirty-year debate between prototype-theory and exemplar-theory in the studies of cognitive psychology regarding the categorization processes. We propose this debate is ill-posed, because it neglects some theoretical and empirical results of machine learning about the bias-variance theorem and the existence of some instance-based classifiers which can embed models subsuming both prototype and exemplar theories. Moreover this debate lies on a epistemological error of pursuing a, so called, experimentum crucis. Then we present how an interdisciplinary approach, based on synthetic method for cognitive modelling, can be useful to progress both the fields of cognitive psychology and machine learning.
机译:在本文中,我们讨论了有关认知心理学和机器学习的分类理论发展的某些方面。我们考虑了关于分类过程的认知心理学研究中的原型理论和范例理论之间长达三十年的争论。我们认为这场辩论是不恰当的,因为它忽略了关于偏差方差定理的机器学习的一些理论和经验结果,以及一些基于实例的分类器的存在,这些分类器可以嵌入同时包含原型理论和示例性理论的模型。此外,这场争论还在于追求所谓的实验关键的认识论错误。然后,我们介绍了基于综合的认知建模方法的跨学科方法如何对促进认知心理学和机器学习领域都有用。

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