Knowledge-Enhanced Attentive Learning for Answer Selection in Community Question Answering Systems
Fengshi Jing, Qingpeng Zhang

TL;DR
This paper introduces KAAS, a novel answer selection model for community question answering systems that integrates both answerer expertise and authority, along with domain knowledge and social network information, to improve answer ranking accuracy.
Contribution
The paper presents a new model that simultaneously considers expertise, authority, domain knowledge, and social network data for answer selection in CQA, addressing limitations of prior methods.
Findings
KAAS outperforms existing models on multiple CQA datasets.
Incorporating domain knowledge improves answer relevance.
Utilizing social network information enhances answerer assessment.
Abstract
In the community question answering (CQA) system, the answer selection task aims to identify the best answer for a specific question, and thus is playing a key role in enhancing the service quality through recommending appropriate answers for new questions. Recent advances in CQA answer selection focus on enhancing the performance by incorporating the community information, particularly the expertise (previous answers) and authority (position in the social network) of an answerer. However, existing approaches for incorporating such information are limited in (a) only considering either the expertise or the authority, but not both; (b) ignoring the domain knowledge to differentiate topics of previous answers; and (c) simply using the authority information to adjust the similarity score, instead of fully utilizing it in the process of measuring the similarity between segments of the…
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Taxonomy
TopicsExpert finding and Q&A systems · Topic Modeling
