Text-to-Text Multi-view Learning for Passage Re-ranking
Research and Development in Information Retrieval(2021)
摘要
ABSTRACTRecently, much progress in natural language processing has been driven by deep contextualized representations pretrained on large corpora. Typically, the fine-tuning on these pretrained models for a specific downstream task is based on single-view learning, which is however inadequate as a sentence can be interpreted differently from different perspectives. Therefore, in this work, we propose a text-to-text multi-view learning framework by incorporating an additional view---the text generation view---into a typical single-view passage ranking model. Empirically, the proposed approach is of help to the ranking performance compared to its single-view counterpart. Component analysis is also reported in the paper.
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关键词
multi-view learning, text-to-text, representation, passage ranking
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