Talent Search systems aim to recommend potential candidates who are a good match to the hiring needs of a recruiter expressed in terms of the recruiter's search query or job posting. Past work in this domain has focused on linear and nonlinear models which lack preference personalization in the user-level due to being trained only with globally collected recruiter activity data. In this paper, we propose an entity-personalized Talent Search model which utilizes a combination of generalized linear mixed (GLMix) models and gradient boosted decision tree (GBDT) models, and provides personalized talent recommendations using nonlinear tree interaction features generated by the GBDT. We also present the o ine and online system architecture for the productionization of this hybrid model approach in our Talent Search systems. Finally, we provide o ine and online experiment results benchmarking our entity-personalized model with tree interaction features, which demonstrate signi cant improvements in our precision metrics compared to globally trained non-personalized models.
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