loading
Papers Papers/2022 Papers Papers/2022

Research.Publish.Connect.

Paper

Authors: Andre Sacilotti ; Rodrigo Souza and Marcelo G. Manzato

Affiliation: Mathematics and Computer Science Institute, University of São Paulo, Av. Trab. Sancarlense 400, São Carlos-SP, Brazil

Keyword(s): Recommender System, Popularity Bias, Fairness, Calibration.

Abstract: Calibration is one approach to dealing with unfairness and popularity bias in recommender systems. While popularity bias can shift users towards consuming more mainstream items, unfairness can harm certain users by not recommending items according to their preferences. However, most state-of-art works on calibration focus only on providing fairer recommendations to users, not considering the popularity bias, which can amplify the long tail effect. To fill the research gap, in this work, we propose a calibration approach that aims to meet users’ interests according to different levels of the items’ popularity. In addition, the system seeks to reduce popularity bias and increase the diversity of recommended items. The proposed method works in a post-processing step and was evaluated through metrics that analyze aspects of fairness, popularity, and accuracy through an offline experiment with two different datasets. The system’s efficiency was validated and evaluated with three different recommendation algorithms, verifying which behaves better and comparing the performance with four other state-of-the-art calibration approaches. As a result, the proposed technique reduced popularity bias and increased diversity and fairness in the two datasets considered. (More)

CC BY-NC-ND 4.0

Sign In Guest: Register as new SciTePress user now for free.

Sign In SciTePress user: please login.

PDF ImageMy Papers

You are not signed in, therefore limits apply to your IP address 18.191.92.124

In the current month:
Recent papers: 100 available of 100 total
2+ years older papers: 200 available of 200 total

Paper citation in several formats:
Sacilotti, A.; Souza, R. and G. Manzato, M. (2023). Counteracting Popularity-Bias and Improving Diversity Through Calibrated Recommendations. In Proceedings of the 25th International Conference on Enterprise Information Systems - Volume 1: ICEIS; ISBN 978-989-758-648-4; ISSN 2184-4992, SciTePress, pages 709-720. DOI: 10.5220/0011846000003467

@conference{iceis23,
author={Andre Sacilotti. and Rodrigo Souza. and Marcelo {G. Manzato}.},
title={Counteracting Popularity-Bias and Improving Diversity Through Calibrated Recommendations},
booktitle={Proceedings of the 25th International Conference on Enterprise Information Systems - Volume 1: ICEIS},
year={2023},
pages={709-720},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0011846000003467},
isbn={978-989-758-648-4},
issn={2184-4992},
}

TY - CONF

JO - Proceedings of the 25th International Conference on Enterprise Information Systems - Volume 1: ICEIS
TI - Counteracting Popularity-Bias and Improving Diversity Through Calibrated Recommendations
SN - 978-989-758-648-4
IS - 2184-4992
AU - Sacilotti, A.
AU - Souza, R.
AU - G. Manzato, M.
PY - 2023
SP - 709
EP - 720
DO - 10.5220/0011846000003467
PB - SciTePress