论文标题

单词含义在思想和机器上

Word meaning in minds and machines

论文作者

Lake, Brenden M., Murphy, Gregory L.

论文摘要

由于自然语言处理(NLP)的最新进展,机器已经实现了广泛而不断增长的语言能力。心理学家对这种模型表现出越来越多的兴趣,将其输出与相似性,关联,启动和理解等心理判断进行了比较,提出了这些模型是否可以作为心理理论的问题。在本文中,我们比较了人类和机器如何代表单词的含义。我们认为,当代的NLP系统是人类单词相似性的相当成功的模型,但在许多其他方面它们都缺乏。当前的模型与大型语料库中的基于文本的模式有很强的联系,并且与人们通过单词表达的欲望,目标和信念相关。单词含义也必须基于感知和行动,并能够以当前系统不是的方式灵活组合。我们讨论了基于NLP系统的更有希望的方法,并认为它们将通过更具人为人的单词含义的概念基础更加成功。

Machines have achieved a broad and growing set of linguistic competencies, thanks to recent progress in Natural Language Processing (NLP). Psychologists have shown increasing interest in such models, comparing their output to psychological judgments such as similarity, association, priming, and comprehension, raising the question of whether the models could serve as psychological theories. In this article, we compare how humans and machines represent the meaning of words. We argue that contemporary NLP systems are fairly successful models of human word similarity, but they fall short in many other respects. Current models are too strongly linked to the text-based patterns in large corpora, and too weakly linked to the desires, goals, and beliefs that people express through words. Word meanings must also be grounded in perception and action and be capable of flexible combinations in ways that current systems are not. We discuss more promising approaches to grounding NLP systems and argue that they will be more successful with a more human-like, conceptual basis for word meaning.

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