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Answer selection in community question answering exploiting knowledge graph and context information
Author(s) -
Golshan Afzali Boroujeni,
Heshaam Faili,
Yadollah Yaghoobzadeh
Publication year - 2022
Publication title -
semantic web
Language(s) - English
Resource type - Journals
eISSN - 2210-4968
pISSN - 1570-0844
DOI - 10.3233/sw-222970
Subject(s) - question answering , computer science , discriminative model , popularity , artificial intelligence , selection (genetic algorithm) , classifier (uml) , graph , generative model , machine learning , commonsense knowledge , information retrieval , generative grammar , natural language processing , knowledge extraction , theoretical computer science , psychology , social psychology
With the increasing popularity of knowledge graph (KG), many applications such as sentiment analysis, trend prediction, and question answering use KG for better performance. Despite the obvious usefulness of commonsense and factual information in the KGs, to the best of our knowledge, KGs have been rarely integrated into the task of answer selection in community question answering (CQA). In this paper, we propose a novel answer selection method in CQA by using the knowledge embedded in KGs. We also learn a latent-variable model for learning the representations of the question and answer, jointly optimizing generative and discriminative objectives. It also uses the question category for producing context-aware representations for questions and answers. Moreover, the model uses variational autoencoders (VAE) in a multi-task learning process with a classifier to produce class-specific representations for answers. The experimental results on three widely used datasets demonstrate that our proposed method is effective and outperforms the existing baselines significantly.

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