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A Transformer-Based Substitute Recommendation Model Incorporating Weakly Supervised Customer Behavior Data

Authors :
Ye, Wenting
Yang, Hongfei
Zhao, Shuai
Fang, Haoyang
Shi, Xingjian
Neppalli, Naveen
Publication Year :
2022

Abstract

The substitute-based recommendation is widely used in E-commerce to provide better alternatives to customers. However, existing research typically uses the customer behavior signals like co-view and view-but-purchase-another to capture the substitute relationship. Despite its intuitive soundness, we find that such an approach might ignore the functionality and characteristics of products. In this paper, we adapt substitute recommendation into language matching problem by taking product title description as model input to consider product functionality. We design a new transformation method to de-noise the signals derived from production data. In addition, we consider multilingual support from the engineering point of view. Our proposed end-to-end transformer-based model achieves both successes from offline and online experiments. The proposed model has been deployed in a large-scale E-commerce website for 11 marketplaces in 6 languages. Our proposed model is demonstrated to increase revenue by 19% based on an online A/B experiment.<br />Comment: 6 pages, 3 figures, 5 tables, accepted in 2023 SIGIR Industry track (SIGIR Symposium on IR in Practice, SIRIP)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.02533
Document Type :
Working Paper