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A Fashion Item Recommendation Model in Hyperbolic Space

Authors :
Shimizu, Ryotaro
Wang, Yu
Kimura, Masanari
Hirakawa, Yuki
Wada, Takashi
Saito, Yuki
McAuley, Julian
Publication Year :
2024

Abstract

In this work, we propose a fashion item recommendation model that incorporates hyperbolic geometry into user and item representations. Using hyperbolic space, our model aims to capture implicit hierarchies among items based on their visual data and users' purchase history. During training, we apply a multi-task learning framework that considers both hyperbolic and Euclidean distances in the loss function. Our experiments on three data sets show that our model performs better than previous models trained in Euclidean space only, confirming the effectiveness of our model. Our ablation studies show that multi-task learning plays a key role, and removing the Euclidean loss substantially deteriorates the model performance.<br />Comment: This work was presented at the CVFAD Workshop at CVPR 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.02599
Document Type :
Working Paper