Adaptive posterior knowledge selection for improving knowledge-grounded dialogue generation
In open-domain dialogue systems, knowledge information such as unstructured persona profiles, text descriptions and structured knowledge graph can help incorporate abundant background facts for delivering more engaging and informative responses. Existing studies attempted to model a general posterio...
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2021
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sg-smu-ink.sis_research-76812024-02-16T07:09:08Z Adaptive posterior knowledge selection for improving knowledge-grounded dialogue generation WANG, Weichao GAO, Wei FENG, Shi CHEN, Ling WANG, Daling In open-domain dialogue systems, knowledge information such as unstructured persona profiles, text descriptions and structured knowledge graph can help incorporate abundant background facts for delivering more engaging and informative responses. Existing studies attempted to model a general posterior distribution over candidate knowledge by considering the entire response utterance as a whole at the beginning of decoding process for knowledge selection. However, a single smooth distribution could fail to model the variability of knowledge selection patterns over different decoding steps, and make the knowledge expression less consistent. To remedy this issue, we propose an adaptive posterior knowledge selection framework, which sequentially introduces a series of discriminative distributions to dynamically control when and what knowledge should be used in specific decoding steps. The adaptive distributions can also capture knowledge-relevant semantic dependencies between adjacent words to refine response generation. In particular, for knowledge graph-grounded dialogue generation, we further incorporate the adaptive distributions into generative word distributions to help express the knowledge entity words. The experimental results show that our developed methods outperform strong baseline systems by large margins. 2021-11-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/6678 info:doi/10.1145/3459637.3482314 https://ink.library.smu.edu.sg/context/sis_research/article/7681/viewcontent/3459637.3482314.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University dialogue generation knowledge graph text knowledge adaptive knowledge selection posterior distribution over knowledge Numerical Analysis and Scientific Computing Theory and Algorithms |
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dialogue generation knowledge graph text knowledge adaptive knowledge selection posterior distribution over knowledge Numerical Analysis and Scientific Computing Theory and Algorithms WANG, Weichao GAO, Wei FENG, Shi CHEN, Ling WANG, Daling Adaptive posterior knowledge selection for improving knowledge-grounded dialogue generation |
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In open-domain dialogue systems, knowledge information such as unstructured persona profiles, text descriptions and structured knowledge graph can help incorporate abundant background facts for delivering more engaging and informative responses. Existing studies attempted to model a general posterior distribution over candidate knowledge by considering the entire response utterance as a whole at the beginning of decoding process for knowledge selection. However, a single smooth distribution could fail to model the variability of knowledge selection patterns over different decoding steps, and make the knowledge expression less consistent. To remedy this issue, we propose an adaptive posterior knowledge selection framework, which sequentially introduces a series of discriminative distributions to dynamically control when and what knowledge should be used in specific decoding steps. The adaptive distributions can also capture knowledge-relevant semantic dependencies between adjacent words to refine response generation. In particular, for knowledge graph-grounded dialogue generation, we further incorporate the adaptive distributions into generative word distributions to help express the knowledge entity words. The experimental results show that our developed methods outperform strong baseline systems by large margins. |
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text |
author |
WANG, Weichao GAO, Wei FENG, Shi CHEN, Ling WANG, Daling |
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WANG, Weichao GAO, Wei FENG, Shi CHEN, Ling WANG, Daling |
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WANG, Weichao |
title |
Adaptive posterior knowledge selection for improving knowledge-grounded dialogue generation |
title_short |
Adaptive posterior knowledge selection for improving knowledge-grounded dialogue generation |
title_full |
Adaptive posterior knowledge selection for improving knowledge-grounded dialogue generation |
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Adaptive posterior knowledge selection for improving knowledge-grounded dialogue generation |
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Adaptive posterior knowledge selection for improving knowledge-grounded dialogue generation |
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adaptive posterior knowledge selection for improving knowledge-grounded dialogue generation |
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Institutional Knowledge at Singapore Management University |
publishDate |
2021 |
url |
https://ink.library.smu.edu.sg/sis_research/6678 https://ink.library.smu.edu.sg/context/sis_research/article/7681/viewcontent/3459637.3482314.pdf |
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