2011
DOI: 10.1007/978-3-642-22362-4_20
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Early Detection of Potential Experts in Question Answering Communities

Abstract: Abstract. Question answering communities (QA) are sustained by a handful of experts who provide a large number of high quality answers. Identifying these experts during the first few weeks of their joining the community can be beneficial as it would allow community managers to take steps to develop and retain these potential experts. In this paper, we explore approaches to identify potential experts as early as within the first two weeks of their association with the QA. We look at users' behavior and estimate… Show more

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Cited by 100 publications
(112 citation statements)
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“…We observe that the dataset is imbalanced regarding class distribution. Other CQA services such as TurboTax Live Community (TTLC) and StackOverflow.com also demonstrate such behavior [51]. Super users in TTLC constitute 0.01 percent of overall users [52].…”
Section: Data Preparation and Methodologymentioning
confidence: 94%
“…We observe that the dataset is imbalanced regarding class distribution. Other CQA services such as TurboTax Live Community (TTLC) and StackOverflow.com also demonstrate such behavior [51]. Super users in TTLC constitute 0.01 percent of overall users [52].…”
Section: Data Preparation and Methodologymentioning
confidence: 94%
“…Identifying Expertise: Different tools and algorithms have been developed to support people in locating expertise on a specific subject inside groups or VCs (Shami et al, 2007;Zhang et al, 2007;Pal et al, 2011). Our work contributes to this research stream.…”
Section: Relevant Techniques For Virtual Communitiesmentioning
confidence: 96%
“…Over 92% of questions that are asked get answered, and the median time for having a question answered on the site is 11 minutes (Mamykina, Manoim, Mittal, Hripcsak, & Hartmann, 2011). This success can be attributed in part to having developed an active corps of experts, all of whom are volunteers who answer the majority of questions on the site (Pal, Chang, & Konstan, 2012).…”
Section: Case Study: Online Community Support In the It Professionmentioning
confidence: 99%