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Transferable Natural Language Interface to Structured Queries Aided by Adversarial Generation

机译:可传递的自然语言接口到对抗性生成辅助的结构化查询

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A natural language interface (NLI) to structured query is intriguing due to its wide industrial applications and high economical values. In this work, we tackle the problem of domain adaptation for NLI with limited data on target domain. Two important approaches are considered: (a) effective general-knowledge-learning on source domain semantic parsing, and (b) data augmentation on target domain. We present a Structured Query Inference Network (SQIN) to enhance learning for domain adaptation, by separating schema information from NL and decoding SQL in a more structural-aware manner; we also propose a GAN-based augmentation technique (AugmentGAN) to mitigate the issue of lacking target domain data, by generating NL texts from recombined target-domain SQL queries. We report solid results on Geoquery, Overnight, and WIKISQL to demonstrate state-of-the-art performances for both in-domain and domain-transfer tasks. Our experiment is promising to significantly reduce human labor for transfer learning tasks.
机译:自然语言接口(NLI)到结构化查询的魅力在于它的广泛的工业应用和很高的经济价值。在这项工作中,我们用目标域上的有限数据解决了NLI的域适应问题。考虑了两种重要的方法:(a)在源域语义解析上进行有效的常规知识学习,以及(b)在目标域上进行数据增强。我们提出了一种结构化查询推理网络(SQIN),以通过从NL分离模式信息并以更具结构意识的方式对SQL进行解码来增强对域适应的学习。我们还提出了一种基于GAN的增强技术(AugmentGAN),可通过从重组的目标域SQL查询生成NL文本来缓解缺少目标域数据的问题。我们报告了有关Geoquery,Overnight和WIKISQL的可靠结果,以展示域内和域转移任务的最新性能。我们的实验有望显着减少转移学习任务所需的人工。

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