Bert-QAnet: BERT-encoded hierarchical question-answer cross-attention network for duplicate question detection

2022 
Community Question Answering (CQA) provides platforms for users with different backgrounds to share information and knowledge. With the increasing popularity of CQA, more and more question-answer (Q-A) pairs, with numerous duplicates, have accumulated. Therefore, many researchers focus on detecting duplicate questions in CQA. However, most existing techniques utilize only questions to solve the duplicate question detection task, while paired answers which may also contain necessary information are not considered. In this paper, we propose a BERT-encoded Hierarchical Question-Answer Cross-Attention Network for Duplicate Question Detection (Bert-QAnet) for detecting duplicate questions. Our model applies
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