Estimating and Evaluating the Uncertainty of Rating Predictions and Top-n Recommendations in Recommender Systems

Author:

Coscrato Victor1ORCID,Bridge Derek1ORCID

Affiliation:

1. University College Cork, Ireland

Abstract

Uncertainty is a characteristic of every data-driven application, including recommender systems. The quantification of uncertainty can be key to increasing user trust in recommendations or choosing which recommendations should be accompanied by an explanation; uncertainty estimates can be used to accomplish recommender tasks such as active learning and co-training. Many uncertainty estimators are available, but to date, the literature has lacked a comprehensive survey and a detailed comparison. In this article, we fulfill these needs. We review the existing methods for uncertainty estimation and metrics for evaluating uncertainty estimates, while also proposing some estimation methods and evaluation metrics of our own. Using two datasets, we compare the methods using the evaluation metrics that we describe, and we discuss their strengths and potential issues. The goal of this work is to provide a foundation to the field of uncertainty estimation in recommender systems, on which further research can be built.

Funder

Science Foundation Ireland

European Regional Development Fund

Publisher

Association for Computing Machinery (ACM)

Reference44 articles.

1. Gediminas Adomavicius, Sreeharsha Kamireddy, and YoungOk Kwon. 2007. Towards more confident recommendations: Improving recommender systems using filtering approach based on rating variance. In Procs. of the 17th Workshop on Information Technology and Systems. 152–157.

2. X. Amatriain, J. M. Pujol, and N. Oliver. 2009. I like it... I like it not: Evaluating user ratings noise in recommender systems. In Procs. of the 17th Conference on User Modeling, Adaptation, and Personalization. 247–258.

3. Andrea Barraza-Urbina. 2017. The exploration-exploitation trade-off in interactive recommender systems. In Procs. of the 11th ACM Conference on Recommender Systems. 431–435.

4. The need for uncertainty quantification in machine-assisted medical decision making

5. Stability of topic modeling via matrix factorization

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