Why Reliabilism Is not Enough: Epistemic and Moral Justification in Machine Learning

A. Smart, Larry James, B. Hutchinson, Simone Wu, Shannon Vallor
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引用次数: 5

Abstract

In this paper we argue that standard calls for explainability that focus on the epistemic inscrutability of black-box machine learning models may be misplaced. If we presume, for the sake of this paper, that machine learning can be a source of knowledge, then it makes sense to wonder what kind of \em justification it involves. How do we rationalize on the one hand the seeming justificatory black box with the observed wide adoption of machine learning? We argue that, in general, people implicitly adoptreliabilism regarding machine learning. Reliabilism is an epistemological theory of epistemic justification according to which a belief is warranted if it has been produced by a reliable process or method \citegoldman2012reliabilism. We argue that, in cases where model deployments require \em moral justification, reliabilism is not sufficient, and instead justifying deployment requires establishing robust human processes as a moral "wrapper'' around machine outputs. We then suggest that, in certain high-stakes domains with moral consequences, reliabilism does not provide another kind of necessary justification---moral justification. Finally, we offer cautions relevant to the (implicit or explicit) adoption of the reliabilist interpretation of machine learning.
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为什么可靠性是不够的:机器学习中的认知和道德辩护
在本文中,我们认为对可解释性的标准呼吁关注黑箱机器学习模型的认知不可知性可能是错位的。为了本文的目的,如果我们假设机器学习可以成为知识的来源,那么想知道它包含什么样的em理由是有意义的。一方面,我们如何用机器学习的广泛采用来合理化看似正当的黑箱?我们认为,一般来说,人们在机器学习方面隐含着可靠性。可靠性论是一种认识论理论,根据这种理论,如果一个信念是通过可靠的过程或方法产生的,那么它就是有保证的。我们认为,在模型部署需要道德证明的情况下,可靠性是不够的,相反,证明部署需要建立健壮的人类过程,作为机器输出的道德“包装”。然后我们认为,在某些具有道德后果的高风险领域,可靠性并不提供另一种必要的正当性——道德正当性。最后,我们提出了与(隐式或显式)采用机器学习的可靠性解释相关的警告。
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