Litcius/Paper detail

Personalized Complementary Product Recommendation

An Yan, Chaosheng Dong, Yan Gao, Jinmiao Fu, Tong Zhao, Yi Sun, Julian McAuley

2022Companion Proceedings of the Web Conference 202230 citationsDOIOpen Access PDF

Abstract

Complementary product recommendation aims at providing product suggestions that are often bought together to serve a joint demand. Existing work mainly focuses on modeling product relationships at a population level, but does not consider personalized preferences of different customers. In this paper, we propose a framework for personalized complementary product recommendation capable of recommending products that fit the demand and preferences of the customers. Specifically, we model product relations and user preferences with a graph attention network and a sequential behavior transformer, respectively. Two networks are cast together through personalized re-ranking and contrastive learning, in which the user and product embedding are learned jointly in an end-to-end fashion. The system recognizes different customer interests by learning from their purchase history and the correlations among customers and products. Experimental results demonstrate that our model benefits from learning personalized information and outperforms non-personalized methods on real production data.

Topics & Concepts

Computer scienceRecommender systemProduct (mathematics)Personalized marketingGraphPersonalizationEmbeddingPopulationRanking (information retrieval)Information retrievalWorld Wide WebArtificial intelligenceTheoretical computer scienceSociologyReturn on marketing investmentMathematicsGeometryDigital marketingDemographyBusiness-to-governmentSentiment Analysis and Opinion MiningRecommender Systems and TechniquesText and Document Classification Technologies
Personalized Complementary Product Recommendation | Litcius