Advancements in Recommender Systems: A Comprehensive Analysis Based on Data, Algorithms, and Evaluation
Xin Ma, Mingyue Li, Xuguang Liu

TL;DR
This paper systematically reviews recommender systems, highlighting current challenges in data, algorithms, and evaluation, and discusses promising future directions to enhance their effectiveness and address key issues.
Contribution
It provides a comprehensive analysis of recent research topics, identifies critical challenges, and proposes innovative solutions for advancing recommender systems.
Findings
Collaborative filtering and hybrid techniques are dominant.
Data issues like cold start and data poisoning significantly impact performance.
Evaluation challenges include offline data leakage and multi-objective balancing.
Abstract
Using 286 research papers collected from Web of Science, ScienceDirect, SpringerLink, arXiv, and Google Scholar databases, a systematic review methodology was adopted to review and summarize the current challenges and potential future developments in data, algorithms, and evaluation aspects of RSs. It was found that RSs involve five major research topics, namely algorithmic improvement, domain applications, user behavior & cognition, data processing & modeling, and social impact & ethics. Collaborative filtering and hybrid recommendation techniques are mainstream. The performance of RSs is jointly limited by four types of eight data issues, two types of twelve algorithmic issues, and two evaluation issues. Notably, data-related issues such as cold start, data sparsity, and data poisoning, algorithmic issues like interest drift, device-cloud collaboration, non-causal driven, and…
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Taxonomy
TopicsRecommender Systems and Techniques
MethodsCausal inference
