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What Is Beautiful Continues to Be Good: People Images and Algorithmic Inferences on Physical Attractiveness

机译:什么是美丽的持续很好:人们的图像和算法推论身体吸引力

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Image recognition algorithms that automatically tag or moderate content are crucial in many applications but are increasingly opaque. Given transparency concerns, we focus on understanding how algorithms tag people images and their inferences on attractiveness. Theoretically, attractiveness has an evolutionary basis, guiding mating behaviors, although it also drives social behaviors. We test image-tagging APIs as to whether they encode biases surrounding attractiveness. We use the Chicago Face Database, containing images of diverse individuals, along with subjective norming data and objective facial measurements. The algorithms encode biases surrounding attractiveness, perpetuating the stereotype that "what is beautiful is good." Furthermore, women are often misinterpreted as men. We discuss the algorithms' reductionist nature, and their potential to infringe on users' autonomy and well-being, as well as the ethical and legal considerations for developers. Future services should monitor algorithms' behaviors given their prevalence in the information ecosystem and influence on media.
机译:自动标记或中等内容的图像识别算法在许多应用中至关重要,但越来越不透明。鉴于透明度问题,我们专注于了解allithms标签的图像和吸引力的推论。从理论上讲,吸引力具有进化的基础,指导交配行为,尽管它还推动了社会行为。我们测试图像标记API,以及它们是否编码围绕着吸引力的偏差。我们使用芝加哥面部数据库,包含各种人的图像,以及主观规范数据和目标面部测量。该算法编码围绕着吸引力的偏见,延长了“美丽是好的东西”的刻板印象。此外,女性经常被误解为男性。我们讨论了算法的还原性质,以及侵犯用户自主性和福祉的潜力,以及开发人员的道德和法律考虑因素。未来的服务应该监控算法的行为,因为他们在信息生态系统中的流行和对媒体的影响。

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