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ColdRoute: Effective Routing of Cold Questions in Stack Exchange Sites

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 Added by Jiankai Sun
 Publication date 2018
and research's language is English




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Routing questions in Community Question Answer services (CQAs) such as Stack Exchange sites is a well-studied problem. Yet, cold-start -- a phenomena observed when a new question is posted is not well addressed by existing approaches. Additionally, cold questions posted by new askers present significant challenges to state-of-the-art approaches. We propose ColdRoute to address these challenges. ColdRoute is able to handle the task of routing cold questions posted by new or existing askers to matching experts. Specifically, we use Factorization Machines on the one-hot encoding of critical features such as question tags and compare our approach to well-studied techniques such as CQARank and semantic matching (LDA, BoW, and Doc2Vec). Using data from eight stack exchange sites, we are able to improve upon the routing metrics (Precision$@1$, Accuracy, MRR) over the state-of-the-art models such as semantic matching by $159.5%$,$31.84%$, and $40.36%$ for cold questions posted by existing askers, and $123.1%$, $27.03%$, and $34.81%$ for cold questions posted by new askers respectively.



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