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Cognitive Graph for Multi-Hop Reading Comprehension at Scale

机译:大规模多跳阅读理解的认知图

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We propose a new CogQA framework for multi-hop question answering in web-scale documents. Founded on the dual process theory in cognitive science, the framework gradually builds a cognitive graph in an iterative process by coordinating an implicit extraction module (System 1) and an explicit reasoning module (System 2). While giving accurate answers, our framework further provides explainable reasoning paths. Specifically, our implementation~1 based on BERT and graph neural network (GNN) efficiently handles millions of documents for multi-hop reasoning questions in the HotpotQA fullwiki dataset. achieving a winning joint F_1 score of 34.9 on the leaderboard, compared to 23.6 of the best competitor.~2
机译:我们提出了一个新的CogQA框架,用于Web规模文档中的多跳问题回答。该框架基于认知科学的双重过程理论,通过协调隐式提取模块(系统1)和显式推理模块(系统2),在迭代过程中逐步构建认知图。在给出准确答案的同时,我们的框架还提供了可解释的推理路径。具体来说,我们基于BERT和图神经网络(GNN)的实现〜1有效地处理了HotpotQA fullwiki数据集中有关多跳推理问题的数百万份文档。在排行榜上获得的联合F_1得分为34.9,而最佳竞争对手为23.6。〜2

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