FairTL:减轻深度生成模型偏差的迁移学习方法

IF 8.7 1区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Christopher T. H. Teo;Milad Abdollahzadeh;Ngai-Man Cheung
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引用次数: 0

摘要

这项工作研究的是公平生成模型。我们揭示并量化了最先进的(SOTA)GAN 在不同敏感属性方面的偏差。为了解决这些偏差,我们的主要贡献是提出了通过迁移学习来学习公平生成模型的新方法。具体来说,首先,我们提出了公平生成模型(FairTL),即用一个大型偏差数据集预先训练生成模型,然后用一个小型公平参考数据集调整模型。其次,为了进一步提高样本多样性,我们提出了 FairTL++,其中包含两项额外的创新:1)对齐特征适应,通过只适应敏感的特定属性参数,在保留已学常识的同时提高公平性;2)多重反馈判别,为质量反馈引入一个冻结判别器,为公平反馈引入另一个不断演化的判别器。在此基础上,我们考虑了另一种具有挑战性和实用性的设置。在这里,只有一个预训练模型可用,但用于预训练模型的数据集无法访问。我们注意到,以前的工作需要访问大型、有偏见的数据集,因此无法处理这种设置。广泛的实验结果表明,FairTL 和 FairTL++ 在质量、多样性和公平性方面都达到了这两种设置中最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FairTL: A Transfer Learning Approach for Bias Mitigation in Deep Generative Models
This work studies fair generative models. We reveal and quantify the biases in state-of-the-art (SOTA) GANs w.r.t. different sensitive attributes. To address the biases, our main contribution is to propose novel methods to learn fair generative models via transfer learning. Specifically, first, we propose FairTL where we pre-train the generative model with a large biased dataset, then adapt the model using a small fair reference dataset. Second, to further improve sample diversity, we propose FairTL++ , containing two additional innovations: 1) aligned feature adaptation , which preserves learned general knowledge while improving fairness by adapting only sensitive attribute-specific parameters, 2) multiple feedback discrimination , which introduces a frozen discriminator for quality feedback and another evolving discriminator for fairness feedback. Taking one step further, we consider an alternative challenging and practical setup. Here, only a pre-trained model is available but the dataset used to pre-train the model is inaccessible. We remark that previous work requires access to large, biased datasets and cannot handle this setup. Extensive experimental results show that FairTL and FairTL++ achieve state-of-the-art performance in quality, diversity and fairness in both setups.
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来源期刊
IEEE Journal of Selected Topics in Signal Processing
IEEE Journal of Selected Topics in Signal Processing 工程技术-工程:电子与电气
CiteScore
19.00
自引率
1.30%
发文量
135
审稿时长
3 months
期刊介绍: The IEEE Journal of Selected Topics in Signal Processing (JSTSP) focuses on the Field of Interest of the IEEE Signal Processing Society, which encompasses the theory and application of various signal processing techniques. These techniques include filtering, coding, transmitting, estimating, detecting, analyzing, recognizing, synthesizing, recording, and reproducing signals using digital or analog devices. The term "signal" covers a wide range of data types, including audio, video, speech, image, communication, geophysical, sonar, radar, medical, musical, and others. The journal format allows for in-depth exploration of signal processing topics, enabling the Society to cover both established and emerging areas. This includes interdisciplinary fields such as biomedical engineering and language processing, as well as areas not traditionally associated with engineering.
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