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Weakly-supervised Neural Semantic Parsing with a Generative Ranker

机译:弱监督神经语义与生成量级的解析

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Weakly-supervised semantic parsers are trained on utterance-denotation pairs, treating logical forms as latent. The task is challenging due to the large search space and spuriousness of logical forms. In this paper we introduce a neural parser-ranker system for weakly-supervised semantic parsing. The parser generates candidate tree-structured logical forms from utterances using clues of denotations. These candidates are then ranked based on two criterion: their likelihood of executing to the correct denotation, and their agreement with the utterance semantics. We present a scheduled training procedure to balance the contribution of the two objectives. Furthermore, we propose to use a neurally encoded lexicon to inject prior domain knowledge to the model. Experiments on three Freebase datasets demonstrate the effectiveness of our semantic parser, achieving results within the state-of-the-art range.
机译:弱监督的语义解析器培训在话语范围对上,将逻辑形式视为潜伏。由于较大的搜索空间和逻辑形式的杂志,任务是挑战性的。在本文中,我们为虚线监督的语义解析引入了神经解析器 - Ranker系统。解析器从使用表示线索的话语生成候选树结构逻辑表格。然后基于两个标准排列这些候选者:他们执行正确的表示的可能性,以及他们与话语语义的协议。我们提出了一项预定的培训程序,以平衡两个目标的贡献。此外,我们建议使用神经编码的词典将先前的域知识注入模型。三个自由比例数据集的实验证明了我们的语义解析器的有效性,实现了最先进范围内的结果。

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