Multi-hop Reading Comprehension Through Question Decomposition And Rescoring | Awesome LLM Papers

Multi-hop Reading Comprehension Through Question Decomposition And Rescoring

Sewon Min, Victor Zhong, Luke Zettlemoyer, Hannaneh Hajishirzi Β· Proceedings of the 57th Annual Meeting of the Association for Computational Linguistics Β· 2019

Multi-hop Reading Comprehension (RC) requires reasoning and aggregation across several paragraphs. We propose a system for multi-hop RC that decomposes a compositional question into simpler sub-questions that can be answered by off-the-shelf single-hop RC models. Since annotations for such decomposition are expensive, we recast sub-question generation as a span prediction problem and show that our method, trained using only 400 labeled examples, generates sub-questions that are as effective as human-authored sub-questions. We also introduce a new global rescoring approach that considers each decomposition (i.e. the sub-questions and their answers) to select the best final answer, greatly improving overall performance. Our experiments on HotpotQA show that this approach achieves the state-of-the-art results, while providing explainable evidence for its decision making in the form of sub-questions.

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