Overcoming Diverse Undesired Effects in Recommender Systems: A Deontological Approach

Publication date

2025-07-28T07:53:25Z

2025-07-28T07:53:25Z

2024-07-27

2025-07-28T07:53:25Z



Abstract

In today’s digital landscape, recommender systems have gained ubiquity as a means of directing users towards personalized products, services, and content. However, despite their widespread adoption and a long track of research, these systems are not immune to shortcomings. A significant challenge faced by recommender systems is the presence of biases, which produces various undesirable effects, prominently the popularity bias. This bias hampers the diversity of recommended items, thus restricting users’ exposure to less popular or niche content. Furthermore, this issue is compounded when multiple stakeholders are considered, requiring the balance of multiple, potentially conflicting objectives. In this paper, we present a new approach to address a wide range of undesired consequences in recommender systems that involve various stakeholders. Instead of adopting a consequentialist perspective that aims to mitigate the repercussions of a recommendation policy, we propose a deontological approach centered around a minimal set of ethical principles. More precisely, we introduce two distinct principles aimed at avoiding overconfidence in predictions and accurately modeling the genuine interests of users. The proposed approach circumvents the need for defining a multi-objective system, which has been identified as one of the main limitations when developing complex recommenders. Through extensive experimentation, we show the efficacy of our approach in mitigating the adverse impact of the recommender from both user and item perspectives, ultimately enhancing various beyond accuracy metrics. This study underscores the significance of responsible and equitable recommendations and proposes a strategy that can be easily deployed in real-world scenarios.

Document Type

Article


Accepted version

Language

English

Publisher

Association for Computing Machinery

Related items

Versió postprint del document publicat a: https://doi.org/10.1145/3643857

ACM Transactions on Intelligent Systems and Technology, 2024, vol. 15, num.4

https://doi.org/10.1145/3643857

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Rights

(c) Duran, PG. et al., 2024

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