内隐学习的计算模型

Axel Cleeremans, Z. Dienes
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引用次数: 39

摘要

内隐学习——被广泛理解为无意识学习——是一种复杂的、多方面的现象,很难定义。french(1998)在概述中列出了多达11个定义,这种多样性无疑是概念和方法挑战的症状,这些挑战在该术语首次出现在文献中四十年后继续遍及该领域(Reber, 1967)。Berry和Dienes(1993)认为,学习是内隐的,当一个人在无意中获得新信息,并且以这种方式获得的知识难以表达时。因此,内隐学习与外显学习(例如,当学习如何解决问题或学习一个概念时)形成强烈对比,后者通常是假设驱动的,是完全有意识的。内隐学习是指一个人对环境中的某些规律变得敏感的过程:(1)不试图学习规律,(2)不知道自己在学习规律,(3)以一种无意识的方式获得知识。在过去的二十年里,内隐学习领域已经开始体现对认知科学中三个基本问题的持续质疑:(1)意识(人们应该如何概念化和测量有意识和无意识认知之间的关系);(2)心理表征(特别是抽象的复杂问题);(3)认知系统的模块化和架构(是否应该认为内隐和外显学习是由大脑的可分离系统所支持的)。计算建模在解决这些问题中起着核心作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational Models of Implicit Learning
Implicit learning – broadly construed as learning without awareness – is a complex, multifaceted phenomenon that defies easy definition. Frensch (1998) listed as many as eleven definitions in an overview, a diversity that is undoubtedly symptomatic of the conceptual and methodological challenges that continue to pervade the field forty years after the term first appeared in the literature (Reber, 1967). According to Berry and Dienes (1993), learning is implicit when an individual acquires new information without intending to do so and in such a way that the resulting knowledge is difficult to express. In this, implicit learning thus contrasts strongly with explicit learning (e.g., as when learning how to solve a problem or learning a concept), which is typically hypothesisdriven and fully conscious. Implicit learning is the process through which one becomes sensitive to certain regularities in the environment: (1) without trying to learn regularities, (2) without knowing that one is learning regularities, and (3) in such a way that the resulting knowledge is unconscious. Over the last twenty years, the field of implicit learning has come to embody ongoing questioning about three fundamental issues in the cognitive sciences: (1) consciousness (how one should conceptualize and measure the relationships between conscious and unconscious cognition); (2) mental representation (in particular, the complex issue of abstraction); and (3) modularity and the architecture of the cognitive system (whether one should think of implicit and explicit learning as being subtended by separable systems of the brain or not). Computational modeling plays a central role in addressing these issues.
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