Publication | Closed Access
Who have got answers?
18
Citations
24
References
2014
Year
Unknown Venue
Artificial IntelligenceRanking AlgorithmEngineeringEnterprise Social PlatformLearning To RankText MiningNatural Language ProcessingComputational Social ScienceInformation RetrievalData ScienceData MiningSocial SearchHuman ComputationQuestion AnsweringKnowledge DiscoveryComputer ScienceSocial Qa HistorySocial ComputingDistance Metric Learning
On top of an enterprise social platform, we are building a smart social QA system that automatically routes questions to suitable employees who are willing, able, and ready to provide answers. Due to a lack of social QA history (training data) to start with, in this paper, we present an optimization-based approach that recommends both top-matched active (seed) and inactive (prospect) answerers for a given question. Our approach includes three parts. First, it uses a predictive model to find top-ranked seed answerers by their fitness, including their ability and willingness, to answer a question. Second, it uses distance metric learning to discover prospects most similar to the seeds identified in the first step. Third, it uses a constraint-based approach to balance the selection of both seeds and prospects identified in the first two steps. As a result, not only does our solution route questions to top-matched active users, but it also engages inactive users to grow the pool of answerers. Our real-world experiments that routed 114 questions to 684 people identified from 400,000+ employees included 641 prospects (93.7%) and achieved about 70% answering rate with 83% of answers received a lot/full confidence.
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