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A dependency-based approach to word contextualization using compositional distributional semantics

机译:基于依赖关系的使用组合分布语义的词语境化方法

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We propose a strategy to build the distributional meaning of sentences, which is mainly based on two types of semantic objects: context vectors associated with content words and compositional operations driven by syntactic dependencies. The compositional operations of a syntactic dependency make use of two input vectors to build two new compositional vectors representing the contextualized sense of the two related words.? Given a sentence, the iterative? application of the dependencies results in as many contextualized vectors as content words the sentence contains. At the end of the? compositional semantic process, we do not obtain a single compositional vector representing the semantic denotation of the whole sentence (or of the root word), but one contextualized vector for each constituent word of the sentence. Our method avoids the troublesome high-order tensor? representations of approaches relying on category theory, by defining all words as first-order tensors (i.e. standard vectors).? ? Some corpus-based experiments are performed to both evaluate the quality of the compositional vectors built with our strategy, and to compare them to other approaches on distributional compositional semantics. The experiments show that our dependency-based compositional method performs as? (or even better than) the state-of-the-art.
机译:我们提出了一种建立句子分布意义的策略,该策略主要基于两种语义对象:与内容词相关的上下文向量和由句法相关性驱动的构图操作。句法依存关系的构成运算利用两个输入向量来构建两个新的构成向量,它们代表两个相关单词的上下文意义。给定一个句子,重复吗?依存关系的应用产生的上下文向量与句子包含的内容词一样多。在末?在组成语义过程中,我们没有获得代表整个句子(或词根)语义表示的单个组成向量,而是为句子的每个组成词提供了一个上下文化向量。我们的方法避免了麻烦的高阶张量?通过将所有单词定义为一阶张量(即标准向量)来表示依赖类别理论的方法。 ?进行了一些基于语料库的实验,以评估使用我们的策略构建的组成向量的质量,并将它们与其他关于分布组成语义的方法进行比较。实验表明,我们基于依存关系的合成方法的表现如何? (甚至优于最新技术)。

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