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挑战了连接主义与分布式表征紧密相连这一普遍假设。

Challenging the widespread assumption that connectionism and distributed representations go hand-in-hand.

作者信息

Bowers Jeffrey S

机构信息

Department of Experimental Psychology, University of Bristol, BS8-1TN, Bristol, UK.

出版信息

Cogn Psychol. 2002 Nov;45(3):413-45. doi: 10.1016/s0010-0285(02)00506-6.

Abstract

One of the central claims associated with the parallel distributed processing approach popularized by D.E. Rumelhart, J.L. McClelland and the PDP Research Group is that knowledge is coded in a distributed fashion. Localist representations within this perspective are widely rejected. It is important to note, however, that connectionist networks can learn localist representations and many connectionist models depend on localist coding for their functioning. Accordingly, a commitment to distributed representations should be considered a specific theoretical claim regarding the structure of knowledge rather than a core principle, as often assumed. In this paper, it is argued that there are fundamental computational and empirical challenges that have not yet been addressed by distributed connectionist theories that are readily accommodated within localist approaches. This is highlighted in the context of modeling word and nonword naming, the domain in which some of the strongest claims have been made. It is shown that current PDP models provide a poor account of naming monosyllable items, and that distributed representations make it difficult for these models to scale up to more complex language phenomena. At the same time, models that learn localist representations are shown to hold promise in supporting many of the core reading and language functions on which PDP models fail. It is concluded that the common rejection of localist coding schemes within connectionist architectures is premature.

摘要

与由D.E.鲁梅尔哈特、J.L.麦克莱兰和PDP研究小组推广的并行分布式处理方法相关的一个核心主张是,知识是以分布式方式编码的。在这种观点下,局部主义表征被广泛摒弃。然而,需要注意的是,联结主义网络可以学习局部主义表征,并且许多联结主义模型的运行依赖于局部主义编码。因此,对分布式表征的坚持应被视为关于知识结构的一种特定理论主张,而非如通常所认为的那样是一个核心原则。本文认为,存在一些基本的计算和实证挑战,分布式联结主义理论尚未解决这些挑战,而局部主义方法却能轻松应对。这一点在对单词和非单词命名建模的背景下得到了凸显,在这个领域已经提出了一些最有力的主张。研究表明,当前的PDP模型对单音节项目命名的解释很差,并且分布式表征使得这些模型难以扩展到更复杂的语言现象。与此同时,学习局部主义表征的模型在支持许多PDP模型未能实现的核心阅读和语言功能方面显示出了前景。结论是,在联结主义架构中普遍摒弃局部主义编码方案为时过早。

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