IRAILGMar 2, 2021

Cross-Domain Recommendation: Challenges, Progress, and Prospects

arXiv:2103.01696v1291 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental contribution that organizes knowledge for researchers and practitioners in recommender systems to address data sparsity issues.

The paper tackles the lack of a systematic review in cross-domain recommendation (CDR) by providing a comprehensive survey of existing approaches, categorizing them into four types and detailing their challenges and progress.

To address the long-standing data sparsity problem in recommender systems (RSs), cross-domain recommendation (CDR) has been proposed to leverage the relatively richer information from a richer domain to improve the recommendation performance in a sparser domain. Although CDR has been extensively studied in recent years, there is a lack of a systematic review of the existing CDR approaches. To fill this gap, in this paper, we provide a comprehensive review of existing CDR approaches, including challenges, research progress, and future directions. Specifically, we first summarize existing CDR approaches into four types, including single-target CDR, multi-domain recommendation, dual-target CDR, and multi-target CDR. We then present the definitions and challenges of these CDR approaches. Next, we propose a full-view categorization and new taxonomies on these approaches and report their research progress in detail. In the end, we share several promising research directions in CDR.

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