论文标题
柏拉图-K:内部和外部知识增强了对话生成
PLATO-K: Internal and External Knowledge Enhanced Dialogue Generation
论文作者
论文摘要
最近,信息缺乏和事实不准确的知识问题困扰了开放域对话系统的实际部署。为此,我们基于两阶段的对话学习介绍了柏拉图-K,以加强内部知识记忆和外部知识开发。在第一阶段,Plato-K通过大规模的对话语料库学习,并将基本知识记住为模型参数。在第二阶段,柏拉图-K模仿人类以搜索外部信息并利用响应生成中的知识。广泛的实验表明,通过这种全面的内部和外部知识增强,在柏拉图-K中,知识问题大大减轻了。与现有的中国对话模型相比,柏拉图-K的整体参与度在聊天和知识密集型对话中显着提高了36.2%和49.2%。
Recently, the practical deployment of open-domain dialogue systems has been plagued by the knowledge issue of information deficiency and factual inaccuracy. To this end, we introduce PLATO-K based on two-stage dialogic learning to strengthen internal knowledge memorization and external knowledge exploitation. In the first stage, PLATO-K learns through massive dialogue corpora and memorizes essential knowledge into model parameters. In the second stage, PLATO-K mimics human beings to search for external information and to leverage the knowledge in response generation. Extensive experiments reveal that the knowledge issue is alleviated significantly in PLATO-K with such comprehensive internal and external knowledge enhancement. Compared to the existing state-of-the-art Chinese dialogue model, the overall engagingness of PLATO-K is improved remarkably by 36.2% and 49.2% on chit-chat and knowledge-intensive conversations.