语义处理的张量编码模型

Mike Symonds, P. Bruza, Laurianne Sitbon, I. Turner
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引用次数: 5

摘要

本文提出并评价了一种基于语料库的语义处理方法。基于语料库的模型直接从文本中构建单词的表示,不需要预先存在的语言知识,并且在许多认知任务中已经证明了心理相关的表现。然而,它们在过去因没有纳入足够的结构信息而受到批评。利用最近尝试克服这一弱点的想法,我们开发了一个增强的张量编码模型来构建用于语义处理的词义表示。与健壮的基线模型相比,我们的增强模型在许多语义处理任务上表现出优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A tensor encoding model for semantic processing
This paper develops and evaluates an enhanced corpus based approach for semantic processing. Corpus based models that build representations of words directly from text do not require pre-existing linguistic knowledge, and have demonstrated psychologically relevant performance on a number of cognitive tasks. However, they have been criticised in the past for not incorporating sufficient structural information. Using ideas underpinning recent attempts to overcome this weakness, we develop an enhanced tensor encoding model to build representations of word meaning for semantic processing. Our enhanced model demonstrates superior performance when compared to a robust baseline model on a number of semantic processing tasks.
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