Exploring heterogeneous features for query-focused summarization of categorized community answers-现代数据工程与实时计算实验室
现代数据工程与实时计算实验室

Exploring heterogeneous features for query-focused summarization of categorized community answers


作者

Wei Wei, ZhaoYan Ming, Liqiang Nie, Guohui Li, Jianjun Li, Feida Zhu, Tianfeng Shang, Changyin Luo

期刊

期刊名称:Elsevier
出版日期:2016
所在页数:403-423

摘要

Community-based question answering (cQA) is a popular type of online knowledge-sharing web service where users ask questions and obtain answers contributed by others. To enhance knowledge sharing, cQA also provides users with a retrieval function to access the historical question-answer pairs (QAs). However, it is still ineffective in that the retrieval result is typically a ranking list of potentially relevant QAs, rather than a succinct and informative answer. To alleviate the problem, this paper proposes a three-level scheme, which aims to generate a query-focused summary-style answer in terms of two factors, i.e., novelty and redundancy. Specifically, we first retrieve a set of QAs to the given query, and then develop a smoothed Naive Bayes model to identify the topics of answers, by exploiting their associated category information. Next, to compute the global ranking scores of answers, we first propose a parameterized graph-based method to model a Markov random walk on a graph that is parameterized by the heterogeneous features of answers, and then combine the ranking scores with the relevance scores of answers. Based on the computed global ranking scores, we utilize two different strategies to construct top-Kcandidate answer set, and finally solve a constrained optimization problem on the sentence set of top-K answers to generate a summary towards a user’s query. Experiments on real-world data demonstrate the effectiveness of our proposed approach as compared to the baselines.

关键词

Summarization; Community-based question answering; Graph-based ranking

[pdf]



地址:湖北省武汉市洪山区珞瑜路1037号,华中科技大学南一楼西南501室 邮编:430074 电话:027-87556601
计算机科学与技术学院,现代数据工程与实时计算实验室 有问题和意见请与网站管理员联系:adelab@163.com

温馨提示:为保证能正常的浏览此网站,请用IE9.0以上版本查看!    访问人次: