Quantitative analysis of Matthew effect and sparsity problem of recommender systems
September 24, 2019 Β· Declared Dead Β· π 2018 IEEE 3rd International Conference on Cloud Computing and Big Data Analysis (ICCCBDA)
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Authors
Hao Wang, Zonghu Wang, Weishi Zhang
arXiv ID
1909.12798
Category
cs.IR: Information Retrieval
Cross-listed
cs.LG
Citations
31
Venue
2018 IEEE 3rd International Conference on Cloud Computing and Big Data Analysis (ICCCBDA)
Last Checked
4 months ago
Abstract
Recommender systems have received great commercial success. Recommendation has been used widely in areas such as e-commerce, online music FM, online news portal, etc. However, several problems related to input data structure pose serious challenge to recommender system performance. Two of these problems are Matthew effect and sparsity problem. Matthew effect heavily skews recommender system output towards popular items. Data sparsity problem directly affects the coverage of recommendation result. Collaborative filtering is a simple benchmark ubiquitously adopted in the industry as the baseline for recommender system design. Understanding the underlying mechanism of collaborative filtering is crucial for further optimization. In this paper, we do a thorough quantitative analysis on Matthew effect and sparsity problem in the particular context setting of collaborative filtering. We compare the underlying mechanism of user-based and item-based collaborative filtering and give insight to industrial recommender system builders.
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