From Transfer to Collaboration: A Federated Framework for Cross-Market Sequential Recommendation
Jundong Chen, Honglei Zhang, Xiangmou Qu, Haoxuan Li, Han Yu, Yidong Li

TL;DR
This paper introduces FeCoSR, a federated framework for cross-market sequential recommendation that promotes collaboration among markets to improve performance and address heterogeneity issues.
Contribution
It proposes a many-to-many collaborative paradigm with semantic soft cross-entropy and market-specific adaptation, advancing cross-market recommendation methods.
Findings
FeCoSR outperforms existing methods on real-world datasets.
The semantic soft cross-entropy improves federated optimization.
Market-specific adaptation enhances local recommendation accuracy.
Abstract
Cross-market recommendation (CMR) aims to enhance recommendation performance across multiple markets. Due to its inherent characteristics, i.e., data isolation, non-overlapping users, and market heterogeneity, CMR introduces unique challenges and fundamentally differs from cross-domain recommendation (CDR). Existing CMR approaches largely inherit CDR by adopting the one-to-one transfer paradigm, where a model is pretrained on a source market and then fine-tuned on a target market. However, such a paradigm suffers from CH1. source degradation, where the source market sacrifices its own performance for the target markets, and CH2. negative transfer, where market heterogeneity leads to suboptimal performance in target markets. To address these challenges, we propose FeCoSR, a novel federated collaboration framework for cross-market sequential recommendation. Specifically, to tackle CH1, we…
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