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Multi-objective Ranking via Constrained Optimization

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arxiv 2002.05753 v1 pith:C56QENMO submitted 2020-02-13 cs.IR cs.LG

Multi-objective Ranking via Constrained Optimization

classification cs.IR cs.LG
keywords methodoptimizationrankingconstrainedproblemachievesalgorithmaugmented
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we introduce an Augmented Lagrangian based method to incorporate the multiple objectives (MO) in a search ranking algorithm. Optimizing MOs is an essential and realistic requirement for building ranking models in production. The proposed method formulates MO in constrained optimization and solves the problem in the popular Boosting framework -- a novel contribution of our work. Furthermore, we propose a procedure to set up all optimization parameters in the problem. The experimental results show that the method successfully achieves MO criteria much more efficiently than existing methods.

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