Finding experts in community question answering services: A theme based query likelihood language approach

Community question answering services provide an open platform for users to acquire and share their knowledge. In the last decade, popularity of such services has increased noticeably. Large number of unanswered questions is a major problem for the growth of such services. A common way to address th...

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Published in2015 International Conference on Advances in Computer Engineering and Applications (ICACEA) pp. 423 - 427
Main Authors Mandal, Deba P., Kundu, Dipankar, Maiti, Saptaditya
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.03.2015
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Abstract Community question answering services provide an open platform for users to acquire and share their knowledge. In the last decade, popularity of such services has increased noticeably. Large number of unanswered questions is a major problem for the growth of such services. A common way to address this issue is to route a new question to some selected users who have the potentiality in answering the question. Expert finding is the process of selecting such potential answerers. In this article, we have introduced an efficient method for expert finding using the theme in query likelihood language (QLL) model. Theme of a query is nothing but its subject matter and we have decided it based on the parts of speech (POS) of the words in the query. Depending on the theme of the given question, its similarity to a question in the archive is determined using the QLL model. Aggregating the similarity values of the questions a user answered previously (i.e., in the archive), his/her expertise for the given question is obtained. The performance of the proposed method is verified on a real world dataset (obtained from Yahoo! Answers) and it is found to be quite encouraging.
AbstractList Community question answering services provide an open platform for users to acquire and share their knowledge. In the last decade, popularity of such services has increased noticeably. Large number of unanswered questions is a major problem for the growth of such services. A common way to address this issue is to route a new question to some selected users who have the potentiality in answering the question. Expert finding is the process of selecting such potential answerers. In this article, we have introduced an efficient method for expert finding using the theme in query likelihood language (QLL) model. Theme of a query is nothing but its subject matter and we have decided it based on the parts of speech (POS) of the words in the query. Depending on the theme of the given question, its similarity to a question in the archive is determined using the QLL model. Aggregating the similarity values of the questions a user answered previously (i.e., in the archive), his/her expertise for the given question is obtained. The performance of the proposed method is verified on a real world dataset (obtained from Yahoo! Answers) and it is found to be quite encouraging.
Author Kundu, Dipankar
Mandal, Deba P.
Maiti, Saptaditya
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Snippet Community question answering services provide an open platform for users to acquire and share their knowledge. In the last decade, popularity of such services...
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StartPage 423
SubjectTerms Calculators
Communities
community question answering
Computational modeling
Estimation
expert finding
Knowledge discovery
query likelihood language model
Routing
Smoothing methods
theme
Yahoo! Answers
Title Finding experts in community question answering services: A theme based query likelihood language approach
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