Publication | Open Access
Personalized Federated Search at LinkedIn
19
Citations
5
References
2015
Year
Unknown Venue
EngineeringSemantic WebText MiningComputational Social ScienceSocial MediaInformation RetrievalData ScienceSocial SearchData IntegrationFederated Search ExperienceSearch TechnologyCollaborative SearchKnowledge DiscoveryData PrivacyPersonalized SearchSearch Engine DesignSocial ComputingMember EngagementLinkedin HomepageArts
LinkedIn has grown to become a platform hosting diverse sources of information ranging from member profiles, jobs, professional groups, slideshows etc. Given the existence of multiple sources, when a member issues a query like "software engineer", the member could look for software engineer profiles, jobs or professional groups. To tackle this problem, we exploit a data-driven approach that extracts searcher intents from their profile data and recent activities at a large scale. The intents such as job seeking, hiring, content consuming are used to construct features to personalize federated search experience. We tested the approach on the LinkedIn homepage and A/B tests show significant improvements in member engagement. As of writing this paper, the approach powers all of federated search on LinkedIn homepage.
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