Towards responsible media recommendation
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Published:2021-11-02
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ISSN:2730-5953
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Container-title:AI and Ethics
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language:en
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Short-container-title:AI Ethics
Author:
Elahi MehdiORCID, Jannach Dietmar, Skjærven Lars, Knudsen Erik, Sjøvaag Helle, Tolonen Kristian, Holmstad Øyvind, Pipkin Igor, Throndsen Eivind, Stenbom Agnes, Fiskerud Eivind, Oesch Adrian, Vredenberg Loek, Trattner Christoph
Abstract
AbstractReading or viewing recommendations are a common feature on modern media sites. What is shown to consumers as recommendations is nowadays often automatically determined by AI algorithms, typically with the goal of helping consumers discover relevant content more easily. However, the highlighting or filtering of information that comes with such recommendations may lead to undesired effects on consumers or even society, for example, when an algorithm leads to the creation of filter bubbles or amplifies the spread of misinformation. These well-documented phenomena create a need for improved mechanisms for responsible media recommendation, which avoid such negative effects of recommender systems. In this research note, we review the threats and challenges that may result from the use of automated media recommendation technology, and we outline possible steps to mitigate such undesired societal effects in the future.
Funder
norges forskningsråd University of Bergen
Publisher
Springer Science and Business Media LLC
Reference105 articles.
1. Abdollahpouri, H., Burke, R., Mobasher, B.: Controlling popularity bias in learning-to-rank recommendation. In: Proceedings of the Eleventh ACM Conference on Recommender Systems, RecSys ’17, pp. 42–46 (2017) 2. Abdollahpouri, H., Burke, R., Mobasher, B.: Managing popularity bias in recommender systems with personalized re-ranking. In: Proceedings of the Thirty-Second International Florida Artificial Intelligence Research Society Conference (FLAIRS ’19), pp. 413–418 (2019) 3. Abdollahpouri, H., Adomavicius, G., Burke, R., Guy, I., Jannach, D., Kamishima, T., Krasnodebski, J., Pizzato, L.: Multistakeholder recommendation: survey and research directions. User Model. User Adapt. Interact. 30(1), 127–158 (2020) 4. Abdollahpouri, H., Mansoury, M., Burke, R., Mobasher, B., Malthouse, E.: User-centered evaluation of popularity bias in recommender systems. In: Proceedings of the 29th ACM Conference on User Modeling, Adaptation and Personalization, UMAP ’21, pp. 119–129 (2021) 5. Adamopoulos, P., Tuzhilin, A.: On unexpectedness in recommender systems: or how to better expect the unexpected. ACM Trans. Intell. Syst. Technol. 5(4), 1–32 (2014)
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