对有偏见的模型进行微调以提高公平性

IF 7.5 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Huiqiang Chen;Tianqing Zhu;Bo Liu;Wanlei Zhou;Philip S. Yu
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引用次数: 0

摘要

公平已经成为机器学习中的一个关键问题,因为有偏见的模型会对不同的群体产生不同的预测,从而使社会不平等永久化。尽管已经提出了许多技术来解决机器学习中的公平性问题,但大多数技术都依赖于在训练阶段纳入公平性约束,一旦部署模型,它们就会失效。本文探讨了微调有偏差模型以增强公平性的潜力,特别适用于重新训练模型不可行的情况。我们的方法植根于对有偏模型中偏差分布的实证分析,我们在有限的范围内微调模型参数,以便保持原始模型的性能。我们首先观察到,对有偏差的模型进行微调会导致偏离其初始状态,其中深层发生最显著的变化。然后,我们设计并应用了一个偏差发现算法,揭示了偏差主要存在于模型的深层。基于这些观察,我们提出了一种简单而高效的方法来消除模型的偏差:微调分类头。我们进行了彻底的理论分析,以证明所提出的方法,并为微调提供指导。此外,我们使用四个网络(CNN, AlexNet, VGG-11和ResNet-18)在表格和图像数据集上实验验证了我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-Tuning a Biased Model for Improving Fairness
Fairness has emerged as a crucial concern in machine learning since biased models would generate dissimilar predictions for different groups, perpetuating social inequalities. Although numerous techniques have been proposed to address the fairness issue in machine learning, most rely on incorporating fairness constraints during the training phase, rendering them ineffective once the model is deployed. This paper explores the potential of fine-tuning biased models to enhance fairness, particularly suitable for scenarios where retraining the model is not feasible. Our approach is rooted in an empirical analysis of the distribution of bias within a biased model, and we fine-tune the model parameter in a limited scope so that the performance of the original model can be maintained. We first observe that fine-tuning a biased model leads to deviations from its initial state, with deep layers undergoing the most significant changes. We then design and apply a bias-discovery algorithm, revealing that bias predominantly resides in the model’s deep layers. Based on these observations, we propose a straightforward yet highly effective method for debiasing the model: fine-tuning the classification head. We conduct a thorough theoretical analysis to justify the proposed method and provide guidance for fine-tuning. Furthermore, we experimentally validate our method on tabular and image datasets using four networks (CNN, AlexNet, VGG-11, and ResNet-18).
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来源期刊
CiteScore
11.80
自引率
2.80%
发文量
114
期刊介绍: The IEEE Transactions on Big Data publishes peer-reviewed articles focusing on big data. These articles present innovative research ideas and application results across disciplines, including novel theories, algorithms, and applications. Research areas cover a wide range, such as big data analytics, visualization, curation, management, semantics, infrastructure, standards, performance analysis, intelligence extraction, scientific discovery, security, privacy, and legal issues specific to big data. The journal also prioritizes applications of big data in fields generating massive datasets.
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