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Vector Space Semantic Parsing: A Framework for Compositional Vector Space Models

机译:矢量空间语义解析:组成矢量空间模型的框架

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We present vector space semantic parsing (VSSP), a framework for learning compositional models of vector space semantics. Our framework uses Combinatory Cate-gorial Grammar (CCG) to define a correspondence between syntactic categories and semantic representations, which are vectors and functions on vectors. The complete correspondence is a direct consequence of minimal assumptions about the semantic representations of basic syntactic categories (e.g., nouns are vectors), and CCG's tight coupling of syntax and semantics. Furthermore, this correspondence permits nonuniform semantic representations and more expressive composition operations than previous work. VSSP builds a CCG semantic parser respecting this correspondence; this semantic parser parses text into lambda calculus formulas that evaluate to vector space representations. In these formulas, the meanings of words are represented by parameters that can be trained in a task-specific fashion. We present experiments using noun-verb-noun and adverb-adjective-noun phrases which demonstrate that VSSP can learn composition operations that RNN (Socher et al., 2011) and MV-RNN (Socher et al., 2012) cannot.
机译:我们呈现矢量空间语义解析(VSSP),是一种学习矢量空间语义的组成模型的框架。我们的框架使用组合Cate-adorial语法(CCG)来定义语法类别和语义表示之间的对应关系,这些语义表示,这些语义是向量和函数的向量。完整的对应是关于基本句法类别的语义表示的最小假设的直接后果(例如,名词是矢量),以及CCG的语法和语义的紧密耦合。此外,该信件允许非均匀的语义表示和比以前的工作更具表现力的组成操作。 VSSP构建了一个尊重此对应关系的CCG语义解析器;这个语义解析器将文本解析为评估矢量空间表示的Lambda微积分公式。在这些公式中,单词的含义由可以以任务特定方式训练的参数表示。我们使用名词 - 动词名词和副词形容词 - 名词短语进行实验,这证明了VSSP可以学习RNN(Socher等,2011)和MV-RNN(Socher等,2012)不能的组成操作。

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