Abstract
Recommender systems have been successfully applied to assist decision making in multiple domains and applications. Multi-criteria recommender systems try to take the user preferences on multiple criteria into consideration, in order to further improve the quality of the recommendations. Most recently, the utility-based multi-criteria recommendation approach has been proposed as an effective and promising solution. However, the issue of over-/under-expectations was ignored in the approach, which may bring risks to the recommendation model. In this paper, we propose a penalty-enhanced model to alleviate this issue. Our experimental results based on multiple real-world data sets can demonstrate the effectiveness of the proposed solutions. In addition, the outcomes of the proposed solution can also help explain the characteristics of the applications by observing the treatment on the issue of over-/under-expectations.
Reference42 articles.
1. The dark side of information: overload, anxiety and other paradoxes and pathologies
2. ParVecMF: A paragraph vector-based matrix factorization recommender system;Alexandridis;arXiv,2017
3. From Free-text User Reviews to Product Recommendation using Paragraph Vectors and Matrix Factorization;Alexandridis,2019
4. New Recommendation Techniques for Multicriteria Rating Systems
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献