ReasoNet: Learning to Stop Reading in Machine Comprehension

17 Sep 2016  ·  Yelong Shen, Po-Sen Huang, Jianfeng Gao, Weizhu Chen ·

Teaching a computer to read and answer general questions pertaining to a document is a challenging yet unsolved problem. In this paper, we describe a novel neural network architecture called the Reasoning Network (ReasoNet) for machine comprehension tasks. ReasoNets make use of multiple turns to effectively exploit and then reason over the relation among queries, documents, and answers. Different from previous approaches using a fixed number of turns during inference, ReasoNets introduce a termination state to relax this constraint on the reasoning depth. With the use of reinforcement learning, ReasoNets can dynamically determine whether to continue the comprehension process after digesting intermediate results, or to terminate reading when it concludes that existing information is adequate to produce an answer. ReasoNets have achieved exceptional performance in machine comprehension datasets, including unstructured CNN and Daily Mail datasets, the Stanford SQuAD dataset, and a structured Graph Reachability dataset.

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Question Answering CNN / Daily Mail ReasoNet CNN 74.7 # 7
Daily Mail 76.6 # 5
Question Answering SQuAD1.1 ReasoNet (ensemble) EM 75.034 # 122
F1 82.552 # 132
Question Answering SQuAD1.1 ReasoNet (single model) EM 70.555 # 161
F1 79.364 # 163

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