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Semantic Codebook Learning for Dynamic Recommendation Models

Authors :
Lv, Zheqi
He, Shaoxuan
Zhan, Tianyu
Zhang, Shengyu
Zhang, Wenqiao
Chen, Jingyuan
Zhao, Zhou
Wu, Fei
Publication Year :
2024

Abstract

Dynamic sequential recommendation (DSR) can generate model parameters based on user behavior to improve the personalization of sequential recommendation under various user preferences. However, it faces the challenges of large parameter search space and sparse and noisy user-item interactions, which reduces the applicability of the generated model parameters. The Semantic Codebook Learning for Dynamic Recommendation Models (SOLID) framework presents a significant advancement in DSR by effectively tackling these challenges. By transforming item sequences into semantic sequences and employing a dual parameter model, SOLID compresses the parameter generation search space and leverages homogeneity within the recommendation system. The introduction of the semantic metacode and semantic codebook, which stores disentangled item representations, ensures robust and accurate parameter generation. Extensive experiments demonstrates that SOLID consistently outperforms existing DSR, delivering more accurate, stable, and robust recommendations.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.00123
Document Type :
Working Paper