放弃机器学习 -- 哲学思考

Daniela Schuster
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摘要

本文在机器学习(ML)和哲学领域之间建立了一种联系,涉及中立行为现象。它研究了一类能够对给定任务做出中立回应的特定机器学习系统,我们称之为 "弃权机器学习系统"。本文介绍并解释了各种弃权机器学习系统,并将它们划分为不同的类型。本文探讨了不同类型机器学习系统中的弃权是如何与与悬置判断相对应的认识论相一致的,同时论述了悬置的性质及其规范性特征。此外,还对弃权反应的自主性和可解释性进行了哲学分析。具体而言,本文认为,弃权系统的其中一种不同类型是可取的,因为它更符合我们对中止判断的标准。此外,与另一种类型相比,它能更好地自主生成弃权输出并对弃权输出做出解释。
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Abstaining Machine Learning -- Philosophical Considerations
This paper establishes a connection between the fields of machine learning (ML) and philosophy concerning the phenomenon of behaving neutrally. It investigates a specific class of ML systems capable of delivering a neutral response to a given task, referred to as abstaining machine learning systems, that has not yet been studied from a philosophical perspective. The paper introduces and explains various abstaining machine learning systems, and categorizes them into distinct types. An examination is conducted on how abstention in the different machine learning system types aligns with the epistemological counterpart of suspended judgment, addressing both the nature of suspension and its normative profile. Additionally, a philosophical analysis is suggested on the autonomy and explainability of the abstaining response. It is argued, specifically, that one of the distinguished types of abstaining systems is preferable as it aligns more closely with our criteria for suspended judgment. Moreover, it is better equipped to autonomously generate abstaining outputs and offer explanations for abstaining outputs when compared to the other type.
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