多模态偏差:用NLP技术评估计算机视觉模型中的性别偏差

Abhishek Mandal, Suzanne Little, Susan Leavy
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摘要

近年来,对比语言图像预训练(CLIP)等大型多模态深度学习模型在多个领域的应用越来越强大。CLIP在视觉和语言模式上工作,并形成了几个流行模型的一部分,如DALL-E和稳定扩散。它是在从互联网上抓取的数百万图像-文本对的大型数据集上进行训练的。这种大型数据集通常用于训练目的而不进行过滤,导致模型从互联网数据中继承社会偏见。鉴于像CLIP这样的模型正被应用于从社交媒体到教育等各种各样的应用中,发现有害的偏见至关重要。然而,由于可能输入和输出的无界性质,传统的偏差度量(如精度)无法检测模型中存在的偏差的范围和复杂性。在本文中,我们使用一种来自自然语言处理的成熟技术,称为词嵌入关联测试(WEAT),对CLIP进行审计,以检测和量化CLIP中的性别偏见,并证明它可以提供这种刻板印象关联的可量化测量。我们检测、测量并可视化了与角色描述和职业相关的各种类型的刻板印象性别关联,发现CLIP显示了刻板印象性别偏见的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Bias: Assessing Gender Bias in Computer Vision Models with NLP Techniques
Large multimodal deep learning models such as Contrastive Language Image Pretraining (CLIP) have become increasingly powerful with applications across several domains in recent years. CLIP works on visual and language modalities and forms a part of several popular models, such as DALL-E and Stable Diffusion. It is trained on a large dataset of millions of image-text pairs crawled from the internet. Such large datasets are often used for training purposes without filtering, leading to models inheriting social biases from internet data. Given that models such as CLIP are being applied in such a wide variety of applications ranging from social media to education, it is vital that harmful biases are detected. However, due to the unbounded nature of the possible inputs and outputs, traditional bias metrics such as accuracy cannot detect the range and complexity of biases present in the model. In this paper, we present an audit of CLIP using an established technique from natural language processing called Word Embeddings Association Test (WEAT) to detect and quantify gender bias in CLIP and demonstrate that it can provide a quantifiable measure of such stereotypical associations. We detected, measured, and visualised various types of stereotypical gender associations with respect to character descriptions and occupations and found that CLIP shows evidence of stereotypical gender bias.
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