CLSDASMay 21, 2023

Wav2SQL: Direct Generalizable Speech-To-SQL Parsing

arXiv:2305.12552v127 citations
Originality Incremental advance
AI Analysis

This addresses data scarcity and generalization challenges in speech-to-SQL parsing, though it appears incremental as it builds on large-scale pre-training and existing techniques.

The paper tackles the problem of converting spoken questions directly into SQL queries for relational databases, proposing Wav2SQL to avoid error compounding in cascaded systems and achieving state-of-the-art results with up to 2.5% accuracy improvement.

Speech-to-SQL (S2SQL) aims to convert spoken questions into SQL queries given relational databases, which has been traditionally implemented in a cascaded manner while facing the following challenges: 1) model training is faced with the major issue of data scarcity, where limited parallel data is available; and 2) the systems should be robust enough to handle diverse out-of-domain speech samples that differ from the source data. In this work, we propose the first direct speech-to-SQL parsing model Wav2SQL which avoids error compounding across cascaded systems. Specifically, 1) to accelerate speech-driven SQL parsing research in the community, we release a large-scale and multi-speaker dataset MASpider; 2) leveraging the recent progress in the large-scale pre-training, we show that it alleviates the data scarcity issue and allow for direct speech-to-SQL parsing; and 3) we include the speech re-programming and gradient reversal classifier techniques to reduce acoustic variance and learned style-agnostic representation, improving generalization to unseen out-of-domain custom data. Experimental results demonstrate that Wav2SQL avoids error compounding and achieves state-of-the-art results by up to 2.5\% accuracy improvement over the baseline.

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