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Unsupervised Deep Structured Semantic Models for Commonsense Reasoning (1904.01938v1)
Published 3 Apr 2019 in cs.CL
Abstract: Commonsense reasoning is fundamental to natural language understanding. While traditional methods rely heavily on human-crafted features and knowledge bases, we explore learning commonsense knowledge from a large amount of raw text via unsupervised learning. We propose two neural network models based on the Deep Structured Semantic Models (DSSM) framework to tackle two classic commonsense reasoning tasks, Winograd Schema challenges (WSC) and Pronoun Disambiguation (PDP). Evaluation shows that the proposed models effectively capture contextual information in the sentence and co-reference information between pronouns and nouns, and achieve significant improvement over previous state-of-the-art approaches.
- Shuohang Wang (69 papers)
- Sheng Zhang (212 papers)
- Yelong Shen (83 papers)
- Xiaodong Liu (162 papers)
- Jingjing Liu (139 papers)
- Jianfeng Gao (344 papers)
- Jing Jiang (192 papers)