Group Fairness in Recommendation Systems: The Importance of Hierarchical Clustering in Identifying Latent Groups in MovieLens and Amazon Books

Fairness in recommendation systems is a critical area of study, particularly when addressing group disparities based on sensitive attributes such as gender, age, activity levels, or user location. This study also explores latent groups identified through hierarchical clustering techniques. The goal...

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Main Authors: Rafael Vargas Mesquita dos Santos, Giovanni Ventorim Comarela
Format: Article
Language:English
Published: Brazilian Computer Society 2025-07-01
Series:Journal on Interactive Systems
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Online Access:https://journals-sol.sbc.org.br/index.php/jis/article/view/5407
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author Rafael Vargas Mesquita dos Santos
Giovanni Ventorim Comarela
author_facet Rafael Vargas Mesquita dos Santos
Giovanni Ventorim Comarela
author_sort Rafael Vargas Mesquita dos Santos
collection DOAJ
description Fairness in recommendation systems is a critical area of study, particularly when addressing group disparities based on sensitive attributes such as gender, age, activity levels, or user location. This study also explores latent groups identified through hierarchical clustering techniques. The goal is to assess group unfairness across various clustering configurations and collaborative filtering strategies to promote equitable and inclusive recommendation systems. We applied collaborative filtering techniques, including ALS, KNN, and NMF, and evaluated group unfairness using metrics such as Rgrp for different clustering configurations (e.g., gender, age, activity level, location, and hierarchical clustering) in two datasets: MovieLens and Amazon Books. Hierarchical clustering yielded the highest group unfairness, with ALS and NMF reaching Rgrp values of 0.0062 and 0.0049 in MovieLens, and NMF and KNN peaking at 0.0972 and 0.0220 in Amazon Books. These results reveal significant fairness disparities across both latent and observable user groups, reinforcing the importance of selecting appropriate filtering strategies and clustering methods to build fair and inclusive recommendation systems.
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spelling doaj-art-9a4e948e7a064d0b837a03c92f7f05162025-07-22T14:31:32ZengBrazilian Computer SocietyJournal on Interactive Systems2763-77192025-07-0116110.5753/jis.2025.5407Group Fairness in Recommendation Systems: The Importance of Hierarchical Clustering in Identifying Latent Groups in MovieLens and Amazon BooksRafael Vargas Mesquita dos Santos0Giovanni Ventorim Comarela1 Federal Institute of Espírito SantoFederal University of Espírito Santo Fairness in recommendation systems is a critical area of study, particularly when addressing group disparities based on sensitive attributes such as gender, age, activity levels, or user location. This study also explores latent groups identified through hierarchical clustering techniques. The goal is to assess group unfairness across various clustering configurations and collaborative filtering strategies to promote equitable and inclusive recommendation systems. We applied collaborative filtering techniques, including ALS, KNN, and NMF, and evaluated group unfairness using metrics such as Rgrp for different clustering configurations (e.g., gender, age, activity level, location, and hierarchical clustering) in two datasets: MovieLens and Amazon Books. Hierarchical clustering yielded the highest group unfairness, with ALS and NMF reaching Rgrp values of 0.0062 and 0.0049 in MovieLens, and NMF and KNN peaking at 0.0972 and 0.0220 in Amazon Books. These results reveal significant fairness disparities across both latent and observable user groups, reinforcing the importance of selecting appropriate filtering strategies and clustering methods to build fair and inclusive recommendation systems. https://journals-sol.sbc.org.br/index.php/jis/article/view/5407Recommendation SystemGroup FairnessAgglomerative Hierarchical ClusteringLatent Groups
spellingShingle Rafael Vargas Mesquita dos Santos
Giovanni Ventorim Comarela
Group Fairness in Recommendation Systems: The Importance of Hierarchical Clustering in Identifying Latent Groups in MovieLens and Amazon Books
Journal on Interactive Systems
Recommendation System
Group Fairness
Agglomerative Hierarchical Clustering
Latent Groups
title Group Fairness in Recommendation Systems: The Importance of Hierarchical Clustering in Identifying Latent Groups in MovieLens and Amazon Books
title_full Group Fairness in Recommendation Systems: The Importance of Hierarchical Clustering in Identifying Latent Groups in MovieLens and Amazon Books
title_fullStr Group Fairness in Recommendation Systems: The Importance of Hierarchical Clustering in Identifying Latent Groups in MovieLens and Amazon Books
title_full_unstemmed Group Fairness in Recommendation Systems: The Importance of Hierarchical Clustering in Identifying Latent Groups in MovieLens and Amazon Books
title_short Group Fairness in Recommendation Systems: The Importance of Hierarchical Clustering in Identifying Latent Groups in MovieLens and Amazon Books
title_sort group fairness in recommendation systems the importance of hierarchical clustering in identifying latent groups in movielens and amazon books
topic Recommendation System
Group Fairness
Agglomerative Hierarchical Clustering
Latent Groups
url https://journals-sol.sbc.org.br/index.php/jis/article/view/5407
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