Prescriptive and Descriptive Approaches to Machine-Learning Transparency

David Adkins, B. Alsallakh, Adeel Cheema, Narine Kokhlikyan, Emily McReynolds, Pushkar Mishra, Chavez Procope, Jeremy Sawruk, Erin Wang, Polina Zvyagina
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引用次数: 8

Abstract

Specialized documentation techniques have been developed to communicate key facts about machine-learning (ML) systems and the datasets and models they rely on. Techniques such as Datasheets, FactSheets, and Model Cards have taken a mainly descriptive approach, providing various details about the system components. While the above information is essential for product developers and external experts to assess whether the ML system meets their requirements, other stakeholders might find it less actionable. In particular, ML engineers need guidance on how to mitigate potential shortcomings in order to fix bugs or improve the system’s performance. We survey approaches that aim to provide such guidance in a prescriptive way. We further propose a preliminary approach, called Method Cards, which aims to increase the transparency and reproducibility of ML systems by providing prescriptive documentation of commonly-used ML methods and techniques. We showcase our proposal with an example in small object detection, and demonstrate how Method Cards can communicate key considerations for model developers. We further highlight avenues for improving the user experience of ML engineers based on Method Cards.
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机器学习透明度的规定性和描述性方法
专门的文档技术已经被开发出来,用于传达机器学习(ML)系统及其所依赖的数据集和模型的关键事实。诸如数据表、事实表和模型卡之类的技术采用了主要的描述性方法,提供了关于系统组件的各种细节。虽然上述信息对于产品开发人员和外部专家评估机器学习系统是否满足他们的要求至关重要,但其他利益相关者可能会发现它不太可行。特别是,机器学习工程师需要指导如何减轻潜在的缺点,以修复错误或提高系统的性能。我们调查旨在以规范的方式提供此类指导的方法。我们进一步提出了一种称为方法卡的初步方法,旨在通过提供常用ML方法和技术的规定性文档来提高ML系统的透明度和可重复性。我们用一个小对象检测的例子来展示我们的建议,并演示方法卡如何为模型开发人员传达关键的考虑。我们进一步强调了基于方法卡改善机器学习工程师用户体验的途径。
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