Knowledge as a bridge: Improving cross-domain answer selection with external knowledge
Answer selection is an important but challenging task. Significant progresses have been made in domains where a large amount of labeled training data is available. However, obtaining rich annotated data is a time-consuming and expensive process, creating a substantial barrier for applying answer sel...
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sg-smu-ink.sis_research-101582024-08-01T08:46:56Z Knowledge as a bridge: Improving cross-domain answer selection with external knowledge DENG, Yang SHEN, Ying YANG, Min LI, Yaliang DU, Nan FAN, Wei LEI, Kai Answer selection is an important but challenging task. Significant progresses have been made in domains where a large amount of labeled training data is available. However, obtaining rich annotated data is a time-consuming and expensive process, creating a substantial barrier for applying answer selection models to a new domain which has limited labeled data. In this paper, we propose Knowledge-aware Attentive Network (KAN), a transfer learning framework for cross-domain answer selection, which uses the knowledge base as a bridge to enable knowledge transfer from the source domain to the target domains. Specifically, we design a knowledge module to integrate the knowledge-based representational learning into answer selection models. The learned knowledge-based representations are shared by source and target domains, which not only leverages large amounts of cross-domain data, but also benefits from a regularization effect that leads to more general representations to help tasks in new domains. To verify the effectiveness of our model, we use SQuAD-T dataset as the source domain and three other datasets (i.e., Yahoo QA, TREC QA and InsuranceQA) as the target domains. The experimental results demonstrate that KAN has remarkable applicability and generality, and consistently outperforms the strong competitors by a noticeable margin for cross-domain answer selection. 2018-08-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/9155 https://ink.library.smu.edu.sg/context/sis_research/article/10158/viewcontent/C18_1279.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 Databases and Information Systems |
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Databases and Information Systems DENG, Yang SHEN, Ying YANG, Min LI, Yaliang DU, Nan FAN, Wei LEI, Kai Knowledge as a bridge: Improving cross-domain answer selection with external knowledge |
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Answer selection is an important but challenging task. Significant progresses have been made in domains where a large amount of labeled training data is available. However, obtaining rich annotated data is a time-consuming and expensive process, creating a substantial barrier for applying answer selection models to a new domain which has limited labeled data. In this paper, we propose Knowledge-aware Attentive Network (KAN), a transfer learning framework for cross-domain answer selection, which uses the knowledge base as a bridge to enable knowledge transfer from the source domain to the target domains. Specifically, we design a knowledge module to integrate the knowledge-based representational learning into answer selection models. The learned knowledge-based representations are shared by source and target domains, which not only leverages large amounts of cross-domain data, but also benefits from a regularization effect that leads to more general representations to help tasks in new domains. To verify the effectiveness of our model, we use SQuAD-T dataset as the source domain and three other datasets (i.e., Yahoo QA, TREC QA and InsuranceQA) as the target domains. The experimental results demonstrate that KAN has remarkable applicability and generality, and consistently outperforms the strong competitors by a noticeable margin for cross-domain answer selection. |
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text |
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DENG, Yang SHEN, Ying YANG, Min LI, Yaliang DU, Nan FAN, Wei LEI, Kai |
author_facet |
DENG, Yang SHEN, Ying YANG, Min LI, Yaliang DU, Nan FAN, Wei LEI, Kai |
author_sort |
DENG, Yang |
title |
Knowledge as a bridge: Improving cross-domain answer selection with external knowledge |
title_short |
Knowledge as a bridge: Improving cross-domain answer selection with external knowledge |
title_full |
Knowledge as a bridge: Improving cross-domain answer selection with external knowledge |
title_fullStr |
Knowledge as a bridge: Improving cross-domain answer selection with external knowledge |
title_full_unstemmed |
Knowledge as a bridge: Improving cross-domain answer selection with external knowledge |
title_sort |
knowledge as a bridge: improving cross-domain answer selection with external knowledge |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2018 |
url |
https://ink.library.smu.edu.sg/sis_research/9155 https://ink.library.smu.edu.sg/context/sis_research/article/10158/viewcontent/C18_1279.pdf |
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