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Improving Open-Domain Dialogue Systems via Multi-Turn Incomplete Utterance Restoration

机译:通过多轮不完整话语恢复来改善开放域对话系统

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In multi-turn dialogue, utterances do not always take the full form of sentences. These incomplete utterances will greatly reduce the performance of open-domain dialogue systems. Restoring more incomplete utterances from context could potentially help the systems generate more relevant responses. To facilitate the study of incomplete utterance restoration for open-domain dialogue systems, a large-scale multi-turn dataset Restoration-200K~1 is collected and manually labeled with the explicit relation between an utterance and its context. We also propose a "pick-and-combine" model to restore the incomplete utterance from its context. Experimental results demonstrate that the annotated dataset and the proposed approach significantly boost the response quality of both single-turn and multi-turn dialogue systems.
机译:在多回合对话中,发声并不总是采用完整的句子形式。这些不完整的话语将大大降低开放域对话系统的性能。从上下文中恢复更多不完整的话语可能会帮助系统产生更多相关的响应。为了便于研究开放域对话系统的不完全话语恢复,收集了一个大型多回合数据集Restoration-200K〜1并手动标记了话语与其上下文之间的显式关系。我们还提出了一种“拾取和组合”模型,以从其上下文中恢复不完整的话语。实验结果表明,带注释的数据集和所提出的方法显着提高了单回合和多回合对话系统的响应质量。

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