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Main Authors: Majumdar, Puspita, Mittal, Surbhi, Chhabra, Saheb, Vatsa, Mayank, Singh, Richa
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.29270
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author Majumdar, Puspita
Mittal, Surbhi
Chhabra, Saheb
Vatsa, Mayank
Singh, Richa
author_facet Majumdar, Puspita
Mittal, Surbhi
Chhabra, Saheb
Vatsa, Mayank
Singh, Richa
contents The problem of bias persists in the deep learning community as models continue to provide disparate performance across different demographic subgroups. Therefore, several algorithms have been proposed to improve the fairness of deep models. However, a majority of these algorithms utilize the protected attribute information for bias mitigation, which severely limits their application in real-world scenarios. To address this concern, we have proposed a novel algorithm, termed as \textbf{Non-Protected Attribute-based Debiasing (NPAD)} algorithm for bias mitigation, that does not require the protected attribute information. The proposed NPAD algorithm utilizes the auxiliary information provided by the non-protected attributes to optimize the model for bias mitigation. Further, two different loss functions, \textbf{Debiasing via Attribute Cluster Loss (DACL)} and \textbf{Filter Redundancy Loss (FRL)} have been proposed to optimize the model for fairness goals. Multiple experiments are performed on the LFWA and CelebA datasets for facial attribute prediction, and a significant reduction in bias across different gender and age subgroups is observed.
format Preprint
id arxiv_https___arxiv_org_abs_2603_29270
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Unbiased Model Prediction Without Using Protected Attribute Information
Majumdar, Puspita
Mittal, Surbhi
Chhabra, Saheb
Vatsa, Mayank
Singh, Richa
Computer Vision and Pattern Recognition
The problem of bias persists in the deep learning community as models continue to provide disparate performance across different demographic subgroups. Therefore, several algorithms have been proposed to improve the fairness of deep models. However, a majority of these algorithms utilize the protected attribute information for bias mitigation, which severely limits their application in real-world scenarios. To address this concern, we have proposed a novel algorithm, termed as \textbf{Non-Protected Attribute-based Debiasing (NPAD)} algorithm for bias mitigation, that does not require the protected attribute information. The proposed NPAD algorithm utilizes the auxiliary information provided by the non-protected attributes to optimize the model for bias mitigation. Further, two different loss functions, \textbf{Debiasing via Attribute Cluster Loss (DACL)} and \textbf{Filter Redundancy Loss (FRL)} have been proposed to optimize the model for fairness goals. Multiple experiments are performed on the LFWA and CelebA datasets for facial attribute prediction, and a significant reduction in bias across different gender and age subgroups is observed.
title Unbiased Model Prediction Without Using Protected Attribute Information
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.29270