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Auteurs principaux: Whitney, Cedric Deslandes, Norman, Justin
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2405.01820
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author Whitney, Cedric Deslandes
Norman, Justin
author_facet Whitney, Cedric Deslandes
Norman, Justin
contents Machine learning systems require representations of the real world for training and testing - they require data, and lots of it. Collecting data at scale has logistical and ethical challenges, and synthetic data promises a solution to these challenges. Instead of needing to collect photos of real people's faces to train a facial recognition system, a model creator could create and use photo-realistic, synthetic faces. The comparative ease of generating this synthetic data rather than relying on collecting data has made it a common practice. We present two key risks of using synthetic data in model development. First, we detail the high risk of false confidence when using synthetic data to increase dataset diversity and representation. We base this in the examination of a real world use-case of synthetic data, where synthetic datasets were generated for an evaluation of facial recognition technology. Second, we examine how using synthetic data risks circumventing consent for data usage. We illustrate this by considering the importance of consent to the U.S. Federal Trade Commission's regulation of data collection and affected models. Finally, we discuss how these two risks exemplify how synthetic data complicates existing governance and ethical practice; by decoupling data from those it impacts, synthetic data is prone to consolidating power away those most impacted by algorithmically-mediated harm.
format Preprint
id arxiv_https___arxiv_org_abs_2405_01820
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Real Risks of Fake Data: Synthetic Data, Diversity-Washing and Consent Circumvention
Whitney, Cedric Deslandes
Norman, Justin
Computers and Society
Artificial Intelligence
Computer Vision and Pattern Recognition
Machine learning systems require representations of the real world for training and testing - they require data, and lots of it. Collecting data at scale has logistical and ethical challenges, and synthetic data promises a solution to these challenges. Instead of needing to collect photos of real people's faces to train a facial recognition system, a model creator could create and use photo-realistic, synthetic faces. The comparative ease of generating this synthetic data rather than relying on collecting data has made it a common practice. We present two key risks of using synthetic data in model development. First, we detail the high risk of false confidence when using synthetic data to increase dataset diversity and representation. We base this in the examination of a real world use-case of synthetic data, where synthetic datasets were generated for an evaluation of facial recognition technology. Second, we examine how using synthetic data risks circumventing consent for data usage. We illustrate this by considering the importance of consent to the U.S. Federal Trade Commission's regulation of data collection and affected models. Finally, we discuss how these two risks exemplify how synthetic data complicates existing governance and ethical practice; by decoupling data from those it impacts, synthetic data is prone to consolidating power away those most impacted by algorithmically-mediated harm.
title Real Risks of Fake Data: Synthetic Data, Diversity-Washing and Consent Circumvention
topic Computers and Society
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.01820