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A Bayesian Model for Unsupervised Semantic Parsing

机译:无监督语义解析的贝叶斯模型

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摘要

We propose a non-parametric Bayesian model for unsupervised semantic parsing. Following Poon and Domingos (2009), we consider a semantic parsing setting where the goal is to (1) decompose the syntactic dependency tree of a sentence into fragments, (2) assign each of these fragments to a cluster of semanti-cally equivalent syntactic structures, and (3) predict predicate-argument relations between the fragments. We use hierarchical Pitman-Yor processes to model statistical dependencies between meaning representations of predicates and those of their arguments, as well as the clusters of their syntactic realizations. We develop a modification of the Metropolis-Hastings split-merge sampler, resulting in an efficient inference algorithm for the model. The method is experimentally evaluated by using the induced semantic representation for the question answering task in the biomedical domain.
机译:我们提出了一种用于非监督语义分析的非参数贝叶斯模型。根据Poon和Domingos(2009)的研究,我们考虑了一种语义分析设置,其目标是(1)将句子的句法依赖树分解为片段,(2)将这些片段中的每一个分配给半语义等效句法集群结构,以及(3)预测片段之间的谓词-参数关系。我们使用层次化的Pitman-Yor流程对谓词和其自变量的含义表示以及它们的句法实现的类之间的统计依赖关系进行建模。我们开发了Metropolis-Hastings拆分合并采样器的修改,从而为该模型提供了一种有效的推理算法。该方法是通过使用诱导的语义表示对生物医学领域中的问答任务进行实验评估的。

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