Enhancing recommender systems with provider fairness through preference distribution-awareness

Going beyond recommendations’ effectiveness, by ensuring properties such as unbiased and fair results, is an aspect that is receiving more and more attention in the literature. This means not only providing accurate recommendations but also ensuring that the visibility of providers aligns with user...

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Main Authors: Elizabeth Gómez, David Contreras, Ludovico Boratto, Maria Salamó
Format: Article
Language:English
Published: Elsevier 2025-06-01
Series:International Journal of Information Management Data Insights
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Online Access:http://www.sciencedirect.com/science/article/pii/S2667096824001009
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author Elizabeth Gómez
David Contreras
Ludovico Boratto
Maria Salamó
author_facet Elizabeth Gómez
David Contreras
Ludovico Boratto
Maria Salamó
author_sort Elizabeth Gómez
collection DOAJ
description Going beyond recommendations’ effectiveness, by ensuring properties such as unbiased and fair results, is an aspect that is receiving more and more attention in the literature. This means not only providing accurate recommendations but also ensuring that the visibility of providers aligns with user preferences and demographic representation, which has been identified as a key aspect of fairness in recommender systems. In particular, provider fairness enables the generation of results which are equitable for different (groups of) providers. In this paper, we raise the problem of how recommendations are distributed when enabling provider fairness. Indeed, on the one hand, users have clear preferences with respect to which providers they choose (e.g., Italian users mostly buy Italian food), so recommendations should reflect these preferences. On the other hand, content providers should be able to reach a diverse audience, and be visible across the different user groups that expressed a preference for them. Specifically, we consider demographic groups based on their continent of origin for both users and providers, and assess how the preferences of the user groups are distributed across the provider groups. We first show that the state-of-the-art models and the existing approaches that enable provider fairness do not reflect the original distribution of the user preferences. To enable this property, we propose a re-ranking approach that, thanks to the use of buckets associating users and items, favors what we call preference distribution-aware provider fairness. Results on two real-world datasets (i.e., the Book-Crossing and COCO) show that our approach can enable provider fairness and tailor the recommendations to the original distribution of the user preferences, with negligible losses in effectiveness. In particular, in the Books dataset, our approach obtains an overall disparity that is around 6%. On the other hand, in the case of the COCO dataset, the disparities are reduced to 2%.
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spelling doaj-art-d3259cde17fd48e4920d2568ffdda4372024-12-30T04:16:04ZengElsevierInternational Journal of Information Management Data Insights2667-09682025-06-0151100311Enhancing recommender systems with provider fairness through preference distribution-awarenessElizabeth Gómez0David Contreras1Ludovico Boratto2Maria Salamó3Facultat de Matemàtiques i Informàtica, Universitat de Barcelona, SpainFacultad de Ingeniería y Arquitectura, Universidad Arturo Prat, Iquique, ChileDepartment of Mathematics and Computer Science, University of Cagliari, Italy; Corresponding author.Facultat de Matemàtiques i Informàtica, Universitat de Barcelona, SpainGoing beyond recommendations’ effectiveness, by ensuring properties such as unbiased and fair results, is an aspect that is receiving more and more attention in the literature. This means not only providing accurate recommendations but also ensuring that the visibility of providers aligns with user preferences and demographic representation, which has been identified as a key aspect of fairness in recommender systems. In particular, provider fairness enables the generation of results which are equitable for different (groups of) providers. In this paper, we raise the problem of how recommendations are distributed when enabling provider fairness. Indeed, on the one hand, users have clear preferences with respect to which providers they choose (e.g., Italian users mostly buy Italian food), so recommendations should reflect these preferences. On the other hand, content providers should be able to reach a diverse audience, and be visible across the different user groups that expressed a preference for them. Specifically, we consider demographic groups based on their continent of origin for both users and providers, and assess how the preferences of the user groups are distributed across the provider groups. We first show that the state-of-the-art models and the existing approaches that enable provider fairness do not reflect the original distribution of the user preferences. To enable this property, we propose a re-ranking approach that, thanks to the use of buckets associating users and items, favors what we call preference distribution-aware provider fairness. Results on two real-world datasets (i.e., the Book-Crossing and COCO) show that our approach can enable provider fairness and tailor the recommendations to the original distribution of the user preferences, with negligible losses in effectiveness. In particular, in the Books dataset, our approach obtains an overall disparity that is around 6%. On the other hand, in the case of the COCO dataset, the disparities are reduced to 2%.http://www.sciencedirect.com/science/article/pii/S2667096824001009Recommender systemsRe-ranking algorithmAlgorithmic fairnessGeographic demographic groupsData imbalanceDisparate impact
spellingShingle Elizabeth Gómez
David Contreras
Ludovico Boratto
Maria Salamó
Enhancing recommender systems with provider fairness through preference distribution-awareness
International Journal of Information Management Data Insights
Recommender systems
Re-ranking algorithm
Algorithmic fairness
Geographic demographic groups
Data imbalance
Disparate impact
title Enhancing recommender systems with provider fairness through preference distribution-awareness
title_full Enhancing recommender systems with provider fairness through preference distribution-awareness
title_fullStr Enhancing recommender systems with provider fairness through preference distribution-awareness
title_full_unstemmed Enhancing recommender systems with provider fairness through preference distribution-awareness
title_short Enhancing recommender systems with provider fairness through preference distribution-awareness
title_sort enhancing recommender systems with provider fairness through preference distribution awareness
topic Recommender systems
Re-ranking algorithm
Algorithmic fairness
Geographic demographic groups
Data imbalance
Disparate impact
url http://www.sciencedirect.com/science/article/pii/S2667096824001009
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AT davidcontreras enhancingrecommendersystemswithproviderfairnessthroughpreferencedistributionawareness
AT ludovicoboratto enhancingrecommendersystemswithproviderfairnessthroughpreferencedistributionawareness
AT mariasalamo enhancingrecommendersystemswithproviderfairnessthroughpreferencedistributionawareness