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Main Authors: Xu, Ke, Wang, Ziliang, Zheng, Wei, Ma, Yuhao, Wang, Chenglin, Jiang, Nengxue, Cao, Cai
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.09286
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author Xu, Ke
Wang, Ziliang
Zheng, Wei
Ma, Yuhao
Wang, Chenglin
Jiang, Nengxue
Cao, Cai
author_facet Xu, Ke
Wang, Ziliang
Zheng, Wei
Ma, Yuhao
Wang, Chenglin
Jiang, Nengxue
Cao, Cai
contents Cross-domain recommendation (CDR) methods are proposed to tackle the sparsity problem in click through rate (CTR) estimation. Existing CDR methods directly transfer knowledge from the source domains to the target domain and ignore the heterogeneities among domains, including feature dimensional heterogeneity and latent space heterogeneity, which may lead to negative transfer. Besides, most of the existing methods are based on single-source transfer, which cannot simultaneously utilize knowledge from multiple source domains to further improve the model performance in the target domain. In this paper, we propose a centralized-distributed transfer model (CDTM) for CDR based on multi-source heterogeneous transfer learning. To address the issue of feature dimension heterogeneity, we build a dual embedding structure: domain specific embedding (DSE) and global shared embedding (GSE) to model the feature representation in the single domain and the commonalities in the global space,separately. To solve the latent space heterogeneity, the transfer matrix and attention mechanism are used to map and combine DSE and GSE adaptively. Extensive offline and online experiments demonstrate the effectiveness of our model.
format Preprint
id arxiv_https___arxiv_org_abs_2411_09286
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Centralized-Distributed Transfer Model for Cross-Domain Recommendation Based on Multi-Source Heterogeneous Transfer Learning
Xu, Ke
Wang, Ziliang
Zheng, Wei
Ma, Yuhao
Wang, Chenglin
Jiang, Nengxue
Cao, Cai
Machine Learning
Cross-domain recommendation (CDR) methods are proposed to tackle the sparsity problem in click through rate (CTR) estimation. Existing CDR methods directly transfer knowledge from the source domains to the target domain and ignore the heterogeneities among domains, including feature dimensional heterogeneity and latent space heterogeneity, which may lead to negative transfer. Besides, most of the existing methods are based on single-source transfer, which cannot simultaneously utilize knowledge from multiple source domains to further improve the model performance in the target domain. In this paper, we propose a centralized-distributed transfer model (CDTM) for CDR based on multi-source heterogeneous transfer learning. To address the issue of feature dimension heterogeneity, we build a dual embedding structure: domain specific embedding (DSE) and global shared embedding (GSE) to model the feature representation in the single domain and the commonalities in the global space,separately. To solve the latent space heterogeneity, the transfer matrix and attention mechanism are used to map and combine DSE and GSE adaptively. Extensive offline and online experiments demonstrate the effectiveness of our model.
title A Centralized-Distributed Transfer Model for Cross-Domain Recommendation Based on Multi-Source Heterogeneous Transfer Learning
topic Machine Learning
url https://arxiv.org/abs/2411.09286