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Crossing Variational Autoencoders for Answer Retrieval (2005.02557v2)

Published 6 May 2020 in cs.CL and cs.IR

Abstract: Answer retrieval is to find the most aligned answer from a large set of candidates given a question. Learning vector representations of questions/answers is the key factor. Question-answer alignment and question/answer semantics are two important signals for learning the representations. Existing methods learned semantic representations with dual encoders or dual variational auto-encoders. The semantic information was learned from LLMs or question-to-question (answer-to-answer) generative processes. However, the alignment and semantics were too separate to capture the aligned semantics between question and answer. In this work, we propose to cross variational auto-encoders by generating questions with aligned answers and generating answers with aligned questions. Experiments show that our method outperforms the state-of-the-art answer retrieval method on SQuAD.

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Authors (6)
  1. Wenhao Yu (139 papers)
  2. Lingfei Wu (135 papers)
  3. Qingkai Zeng (28 papers)
  4. Shu Tao (2 papers)
  5. Yu Deng (88 papers)
  6. Meng Jiang (126 papers)
Citations (15)

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