The Ethics of Going Deep: Challenges in Machine Learning for Sensitive Security Domains

Aliai Eusebi, Marie Vasek, E. Cockbain, Enrico Mariconti
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引用次数: 2

Abstract

Sometimes, machine learning models can determine the trajectory of human life, and a series of cascading ethical failures could be irreversible. Ethical concerns are nevertheless set to increase, in particular when the injection of algorithmic forms of decision-making occurs in highly sensitive security contexts. In cybercrime, there have been cases of algorithms that have not identified racist and hateful speeches, as well as missing the identification of Image Based Sexual Abuse cases. Hence, this paper intends to add a voice of caution on the vulnerabilities pervading the different stages of a machine learning development pipeline and the ethical challenges that these potentially nurture and perpetuate. To highlight both the issues and potential fixes in an adversarial environment, we use Child Sexual Exploitation and its implications on the Internet as a case study, being 2021 its worst year according to the Internet Watch Foundation.
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深入的伦理:敏感安全领域机器学习的挑战
有时,机器学习模型可以决定人类生活的轨迹,而一系列连锁的道德失败可能是不可逆转的。然而,伦理问题势必会增加,特别是当在高度敏感的安全环境中注入算法形式的决策时。在网络犯罪中,有一些算法无法识别种族主义和仇恨言论,以及无法识别基于图像的性虐待案件。因此,本文打算对机器学习开发管道的不同阶段普遍存在的漏洞以及这些潜在的培育和延续的伦理挑战提出警告。为了强调在敌对环境中存在的问题和潜在的解决办法,我们以互联网上的儿童性剥削及其影响为例进行了研究,根据互联网观察基金会的数据,2021年是互联网上儿童性剥削最严重的一年。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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