工程可靠机器学习应用实践

A. Serban, K. Blom, H. Hoos, Joost Visser
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引用次数: 12

摘要

随着最近机器学习(ML)的采用激增,机器学习的不当使用可能对用户和社会产生的负面影响现在也被广泛认识到。为了解决这个问题,政策制定者和其他利益相关者,如欧盟委员会或NIST,已经提出了旨在促进可信赖的机器学习(即合法、道德和稳健)的高级指导方针。然而,这些指导方针并没有指定构建机器学习系统所涉及的操作。在本文中,我们认为与值得信赖的机器学习开发相关的指导方针可以转化为操作实践,并且应该成为机器学习开发生命周期的一部分。为了实现这一目标,我们进行了多声音文献综述,并从白色和灰色文献中挖掘操作实践。此外,我们发起了一项全球调查,以衡量实践的采用和这些实践的影响。总的来说,我们确定了14个新的实践,并用它们来补充现有的机器学习工程实践目录。对调查结果的初步分析表明,到目前为止,值得信赖的机器学习的实践采用率相对较低。特别是,与确保ML组件安全性相关的实践的采用率非常低。其他实践的采用程度略高,例如向用户提供解释。我们扩展的实践目录可以被机器学习开发团队用来弥合高级指南和值得信赖的机器学习系统实际开发之间的差距;它是开放的审查和贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practices for Engineering Trustworthy Machine Learning Applications
Following the recent surge in adoption of machine learning (ML), the negative impact that improper use of ML can have on users and society is now also widely recognised. To address this issue, policy makers and other stakeholders, such as the European Commission or NIST, have proposed high-level guidelines aiming to promote trustworthy ML (i.e., lawful, ethical and robust). However, these guidelines do not specify actions to be taken by those involved in building ML systems. In this paper, we argue that guidelines related to the development of trustworthy ML can be translated to operational practices, and should become part of the ML development life cycle. Towards this goal, we ran a multi-vocal literature review, and mined operational practices from white and grey literature. Moreover, we launched a global survey to measure practice adoption and the effects of these practices. In total, we identified 14 new practices, and used them to complement an existing catalogue of ML engineering practices. Initial analysis of the survey results reveals that so far, practice adoption for trustworthy ML is relatively low. In particular, practices related to assuring security of ML components have very low adoption. Other practices enjoy slightly larger adoption, such as providing explanations to users. Our extended practice catalogue can be used by ML development teams to bridge the gap between high-level guidelines and actual development of trustworthy ML systems; it is open for review and contributions.
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