Filtering before Iteratively Referring for Knowledge-Grounded Response Selection in Retrieval-Based Chatbots
The challenges of building knowledge-grounded retrieval-based chatbots lie in how to ground a conversation on the background knowledge and how to perform their matching with the response. This paper proposes a method named Filtering before Iteratively REferring (FIRE) for presenting the background knowledge of dialogue agents in retrieval-based chatbots. We first propose a pre-filter, which is composed of a context filter and a knowledge filter. This pre-filter grounds the conversation on the knowledge and comprehends the knowledge according to the conversation by collecting the matching information between them bidirectionally, and then recognizing the important information in them accordingly. After that, iteratively referring is performed between the context and the response, as well as between the knowledge and the response, in order to collect the deep and wide matching information. Experimental results show that the FIRE model outperforms previous methods by margins larger than 2.8 original personas and 4.1 well as 3.1
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