Towards Interpretable Reasoning over Paragraph Effects in Situation
@article{Ren2020TowardsIR, title={Towards Interpretable Reasoning over Paragraph Effects in Situation}, author={Mucheng Ren and Xiubo Geng and Tao Qin and He-yan Huang and Daxin Jiang}, journal={ArXiv}, year={2020}, volume={abs/2010.01272} }
We focus on the task of reasoning over paragraph effects in situation, which requires a model to understand the cause and effect described in a background paragraph, and apply the knowledge to a novel situation. Existing works ignore the complicated reasoning process and solve it with a one-step "black box" model. Inspired by human cognitive processes, in this paper we propose a sequential approach for this task which explicitly models each step of the reasoning process with neural network… CONTINUE READING
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