Learning to Simulate Natural Language Feedback for Interactive Semantic Parsing (2305.08195v2)
Abstract: Interactive semantic parsing based on natural language (NL) feedback, where users provide feedback to correct the parser mistakes, has emerged as a more practical scenario than the traditional one-shot semantic parsing. However, prior work has heavily relied on human-annotated feedback data to train the interactive semantic parser, which is prohibitively expensive and not scalable. In this work, we propose a new task of simulating NL feedback for interactive semantic parsing. We accompany the task with a novel feedback evaluator. The evaluator is specifically designed to assess the quality of the simulated feedback, based on which we decide the best feedback simulator from our proposed variants. On a text-to-SQL dataset, we show that our feedback simulator can generate high-quality NL feedback to boost the error correction ability of a specific parser. In low-data settings, our feedback simulator can help achieve comparable error correction performance as trained using the costly, full set of human annotations.
- Hao Yan (109 papers)
- Saurabh Srivastava (14 papers)
- Yintao Tai (2 papers)
- Sida I. Wang (20 papers)
- Wen-tau Yih (84 papers)
- Ziyu Yao (44 papers)