Effective Two-Stage Knowledge Transfer for Multi-Entity Cross-Domain Recommendation
Jianyu Guan, Zongming Yin, Tianyi Zhang, Leihui Chen, Yin Zhang, Fei, Huang, Jufeng Chen, Shuguang Han

TL;DR
This paper introduces MKT, a novel two-stage transfer framework that effectively transfers knowledge across multiple entity types in e-commerce recommendations, addressing feature schema differences and data distribution issues.
Contribution
The paper proposes a multi-entity pre-training and fine-tuning framework with feature alignment, improving cross-entity recommendation performance in complex multi-entity scenarios.
Findings
MKT outperforms existing state-of-the-art methods in offline and online tests.
Feature alignment significantly enhances knowledge transfer across different entities.
The framework effectively handles data distribution differences and feature schema mismatches.
Abstract
In recent years, the recommendation content on e-commerce platforms has become increasingly rich -- a single user feed may contain multiple entities, such as selling products, short videos, and content posts. To deal with the multi-entity recommendation problem, an intuitive solution is to adopt the shared-network-based architecture for joint training. The idea is to transfer the extracted knowledge from one type of entity (source entity) to another (target entity). However, different from the conventional same-entity cross-domain recommendation, multi-entity knowledge transfer encounters several important issues: (1) data distributions of the source entity and target entity are naturally different, making the shared-network-based joint training susceptible to the negative transfer issue, (2) more importantly, the corresponding feature schema of each entity is not exactly aligned (e.g.,…
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Taxonomy
TopicsRecommender Systems and Techniques · Topic Modeling · Intelligent Tutoring Systems and Adaptive Learning
MethodsALIGN
