Transparency, Privacy, and Fairness in Recommender Systems
Dominik Kowald

TL;DR
This paper explores transparency, privacy, and fairness in recommender systems, proposing psychology-informed designs, privacy-preserving algorithms, and analyzing bias and fairness dynamics to improve trustworthy AI applications.
Contribution
It introduces psychology-informed recommender systems, a novel privacy-preserving collaborative filtering method, and analyzes fairness issues like popularity bias and long-term fairness dynamics.
Findings
Psychology-informed models enhance transparency.
Efficient neighborhood reuse reduces privacy costs.
Popularity bias correlates with recommendation frequency.
Abstract
Recommender systems have become a pervasive part of our daily online experience, and are one of the most widely used applications of artificial intelligence and machine learning. Therefore, regulations and requirements for trustworthy artificial intelligence, for example, the European AI Act, which includes notions such as transparency, privacy, and fairness are also highly relevant for the design of recommender systems in practice. This habilitation elaborates on aspects related to these three notions in the light of recommender systems, namely: (i) transparency and cognitive models, (ii) privacy and limited preference information, and (iii) fairness and popularity bias in recommender systems. Specifically, with respect to aspect (i), we highlight the usefulness of incorporating psychological theories for a transparent design process of recommender systems. We term this type of systems…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Recommender Systems and Techniques · Advanced Bandit Algorithms Research
