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Estimating the average need of semantic knowledge from distributional semantic models

机译:从分布语义模型估算语义知识的平均需求

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摘要

Continuous bag of words (CBOW) and skip-gram are two recently developed models of lexical semantics (Mikolov, Chen, Corrado, & Dean, Advances in Neural Information Processing Systems, 26, 3111-3119, 2013). Each has been demonstrated to perform markedly better at capturing human judgments about semantic relatedness than competing models (e.g., latent semantic analysis; Landauer & Dumais, Psychological Review, 104(2), 1997 211; hyperspace analogue to language; Lund & Burgess, Behavior Research Methods, Instruments, & Computers, 28(2), 203-208, 1996). The new models were largely developed to address practical problems of meaning representation in natural language processing. Consequently, very little attention has been paid to the psychological implications of the performance of these models. We describe the relationship between the learning algorithms employed by these models and Anderson's rational theory of memory (J. R. Anderson & Milson, Psychological Review, 96(4), 703, 1989) and argue that CBOW is learning word meanings according to Anderson's concept of needs probability. We also demonstrate that CBOW can account for nearly all of the variation in lexical access measures typically attributable to word frequency and contextual diversity-two measures that are conceptually related to needs probability. These results suggest two conclusions: One, CBOW is a psychologically plausible model of lexical semantics. Two, word frequency and contextual diversity do not capture learning effects but rather memory retrieval effects.
机译:连续的单词(CBow)和Skip-gram是最近开发的词汇语义(Mikolov,Chen,Corrado,&Dean,神经信息处理系统的进步,26,3111-3119,2013)。每个人都证明了在捕获关于语义相关性的人类判断方面的表现明显更好(例如,潜在语义分析; Landauer&Dumais,心理审查,104(2),1997 211; Hymerspace模拟语言; Lund&Burgess,行为研究方法,仪器和计算机,28(2),203-208,1996)。新型模型在很大程度上是为解决自然语言处理中意义代表性的实际问题。因此,对这些模型性能的心理影响,非常重视。我们描述了这些模型和Anderson合理的记忆理性理论(JR Anderson&Milson,心理审查,96(4),703,1999)所采用的学习算法之间的关系(JR Anderson&Milson,96(4),703,1989)并认为Cow是根据Anderson的需求概念学习词含义可能性。我们还证明CBOW可以考虑近乎所有归因于概念性相关概率的词频率和上下文分集的词汇访问措施中的几乎所有变化。这些结果表明了两个结论:一,CBAW是词汇语义的一种心理上可符号的模型。两个,Word频率和上下文分集不会捕获学习效果,而是内存检索效果。

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