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STRUCTVAE: Tree-structured Latent Variable Models for Semi-supervised Semantic Parsing

机译:STRUCTVAE:半监督语义分析的树状结构潜在变量模型

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Semantic parsing is the task of transducing natural language (NL) utterances into formal meaning representations (MRs), commonly represented as tree structures. Annotating NL utterances with their corresponding MRs is expensive and time-consuming, and thus the limited availability of labeled data often becomes the bottleneck of data-driven, supervised models. We introduce StructVAE, a vari-ational auto-encoding model for semi-supervised semantic parsing, which learns both from limited amounts of parallel data, and readily-available unlabeled NL utterances. StructVAE models latent MRs not observed in the unlabeled data as tree-structured latent variables. Experiments on semantic parsing on the Atis domain and Python code generation show that with extra unlabeled data, StructVAE outperforms strong supervised models.
机译:语义解析是将自然语言(NL)的语音转换为形式化的意义表示(MR)(通常表示为树状结构)的任务。用其对应的MR注释NL语音既昂贵又费时,因此标记数据的有限可用性经常成为数据驱动的受监督模型的瓶颈。我们介绍了StructVAE,这是一种用于半监督语义分析的变体自动编码模型,该模型从有限数量的并行数据和易于获得的未标记NL语音中学习。 StructVAE将未标记数据中未观察到的潜在MR建模为树状结构的潜在变量。在Atis域上进行语义解析和Python代码生成的实验表明,使用额外的未标记数据,StructVAE的性能优于强大的受监督模型。

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