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Lifelong Knowledge Learning in Rule-based Dialogue Systems

2020-11-19 13:33:12
Bing Liu, Chuhe Mei

Abstract

One of the main weaknesses of current chatbots or dialogue systems is that they do not learn online during conversations after they are deployed. This is a major loss of opportunity. Clearly, each human user has a great deal of knowledge about the world that may be useful to others. If a chatbot can learn from their users during chatting, it will greatly expand its knowledge base and serve its users better. This paper proposes to build such a learning capability in a rule-based chatbot so that it can continuously acquire new knowledge in its chatting with users. This work is useful because many real-life deployed chatbots are rule-based.

Abstract (translated)

URL

https://arxiv.org/abs/2011.09811

PDF

https://arxiv.org/pdf/2011.09811.pdf


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