Consistency Regularization for Complementary Clothing Recommendations
Shuiying Liao, P.Y. Mok, Li Li

TL;DR
This paper introduces CR-BPR, a consistency regularized Bayesian Personalized Ranking model for clothing recommendations that effectively handles multi-modal data and improves matching accuracy by emphasizing consistency in user and product interactions.
Contribution
The study presents a novel CR-BPR model that incorporates consistency regularization and feature scaling to enhance complementary clothing recommendations over existing methods.
Findings
CR-BPR outperforms existing models on benchmark datasets.
Incorporating consistency regularization improves recommendation accuracy.
Feature scaling effectively handles multi-modal data imbalances.
Abstract
This paper reports on the development of a Consistency Regularized model for Bayesian Personalized Ranking (CR-BPR), addressing to the drawbacks in existing complementary clothing recommendation methods, namely limited consistency and biased learning caused by diverse feature scale of multi-modal data. Compared to other product types, fashion preferences are inherently subjective and more personal, and fashion are often presented, not by individual clothing product, but with other complementary product(s) in a well coordinated fashion outfit. Current complementary-product recommendation studies primarily focus on user preference and product matching, this study further emphasizes the consistency observed in user-product interactions as well as product-product interactions, in the specific context of clothing matching. Most traditional approaches often underplayed the impact of existing…
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Taxonomy
TopicsColor perception and design
MethodsFocus
