A pareto-efficient algorithm for multiple objective optimization in e-commerce recommendation

X Lin, H Chen, C Pei, F Sun, X Xiao, H Sun… - Proceedings of the 13th …, 2019 - dl.acm.org
X Lin, H Chen, C Pei, F Sun, X Xiao, H Sun, Y Zhang, W Ou, P Jiang
Proceedings of the 13th ACM Conference on recommender systems, 2019dl.acm.org
Recommendation with multiple objectives is an important but difficult problem, where the
coherent difficulty lies in the possible conflicts between objectives. In this case, multi-
objective optimization is expected to be Pareto efficient, where no single objective can be
further improved without hurting the others. However existing approaches to Pareto efficient
multi-objective recommendation still lack good theoretical guarantees. In this paper, we
propose a general framework for generating Pareto efficient recommendations. Assuming …
Recommendation with multiple objectives is an important but difficult problem, where the coherent difficulty lies in the possible conflicts between objectives. In this case, multi-objective optimization is expected to be Pareto efficient, where no single objective can be further improved without hurting the others. However existing approaches to Pareto efficient multi-objective recommendation still lack good theoretical guarantees.
In this paper, we propose a general framework for generating Pareto efficient recommendations. Assuming that there are formal differentiable formulations for the objectives, we coordinate these objectives with a weighted aggregation. Then we propose a condition ensuring Pareto efficiency theoretically and a two-step Pareto efficient optimization algorithm. Meanwhile the algorithm can be easily adapted for Pareto Frontier generation and fair recommendation selection. We specifically apply the proposed framework on E-Commerce recommendation to optimize GMV and CTR simultaneously. Extensive online and offline experiments are conducted on the real-world E-Commerce recommender system and the results validate the Pareto efficiency of the framework.
To the best of our knowledge, this work is among the first to provide a Pareto efficient framework for multi-objective recommendation with theoretical guarantees. Moreover, the framework can be applied to any other objectives with differentiable formulations and any model with gradients, which shows its strong scalability.
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