4.7 Article

Commonsense Knowledge Enhanced Memory Network for Stance Classification

Journal

IEEE INTELLIGENT SYSTEMS
Volume 35, Issue 4, Pages 102-109

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/MIS.2020.2983497

Keywords

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Funding

  1. National Natural Science Foundation of China [61632011, 61876053]
  2. Key Technologies Research and Development Program of Shenzhen [JSGG20170 817140856618]
  3. Shenzhen Foundational Research Funding [JCYJ20180507183527919, JCYJ20180507183608379]
  4. EU-H2020 [794196]

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Stance classification aims at identifying, in the text, the attitude toward the given targets as favorable, negative, or unrelated. In existing models for stance classification, only textual representation is leveraged, while commonsense knowledge is ignored. In order to better incorporate commonsense knowledge into stance classification, we propose a novel model named commonsense knowledge enhanced memory network, which jointly represents textual and commonsense knowledge representation of given target and text. The textual memory module in our model treats the textual representation as memory vectors, and uses attention mechanism to embody the important parts. For commonsense knowledge memory module, we jointly leverage the entity and relation embeddings learned by TransE model to take full advantage of constraints of the knowledge graph. Experimental results on the SemEval dataset show that the combination of the commonsense knowledge memory and textual memory can improve stance classification.

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