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Multi-hop Reading Comprehension through Question Decomposition and Rescoring

机译:通过问题分解和记分进行多跳阅读理解

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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.
机译:多跳阅读理解(RC)需要对多个段落进行推理和汇总。我们提出了一种用于多跳RC的系统,该系统将组成问题分解为更简单的子问题,这些子问题可以通过现成的单跳RC模型来回答。由于这种分解的注释很昂贵,因此我们将子问题生成重塑为跨度预测问题,并表明我们的方法仅使用400个带标签的示例进行了训练,生成的子问题与人工编写的子问题一样有效。我们还引入了一种新的全局计分方法,该方法考虑了每个分解(即子问题及其答案),以选择最佳的最终答案,从而大大提高了整体性能。我们在HOTPOTQA上进行的实验表明,该方法达到了最新的结果,同时以子问题的形式为其决策提供了可解释的证据。

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