Filtering before Iteratively Referring for Knowledge-Grounded Response
Selection in Retrieval-Based Chatbots
- URL: http://arxiv.org/abs/2004.14550v2
- Date: Mon, 21 Sep 2020 06:50:18 GMT
- Title: Filtering before Iteratively Referring for Knowledge-Grounded Response
Selection in Retrieval-Based Chatbots
- Authors: Jia-Chen Gu, Zhen-Hua Ling, Quan Liu, Zhigang Chen, Xiaodan Zhu
- Abstract summary: This paper proposes a method named Filtering before Iteratively REferring (FIRE) for this task.
We show that FIRE outperforms previous methods by margins larger than 2.8% and 4.1% on the PERSONA-CHAT dataset.
We also show that FIRE is more interpretable by visualizing the knowledge grounding process.
- Score: 56.52403181244952
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The challenges of building knowledge-grounded retrieval-based chatbots lie in
how to ground a conversation on its background knowledge and how to match
response candidates with both context and knowledge simultaneously. This paper
proposes a method named Filtering before Iteratively REferring (FIRE) for this
task. In this method, a context filter and a knowledge filter are first built,
which derive knowledge-aware context representations and context-aware
knowledge representations respectively by global and bidirectional attention.
Besides, the entries irrelevant to the conversation are discarded by the
knowledge filter. After that, iteratively referring is performed between
context and response representations as well as between knowledge and response
representations, in order to collect deep matching features for scoring
response candidates. Experimental results show that FIRE outperforms previous
methods by margins larger than 2.8% and 4.1% on the PERSONA-CHAT dataset with
original and revised personas respectively, and margins larger than 3.1% on the
CMU_DoG dataset in terms of top-1 accuracy. We also show that FIRE is more
interpretable by visualizing the knowledge grounding process.
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