论文标题

迈向评估机器学习系统质量的准则

Towards Guidelines for Assessing Qualities of Machine Learning Systems

论文作者

Siebert, Julien, Joeckel, Lisa, Heidrich, Jens, Nakamichi, Koji, Ohashi, Kyoko, Namba, Isao, Yamamoto, Rieko, Aoyama, Mikio

论文摘要

如今,基于机器学习(ML)方法的组件的系统变得越来越普遍。为了确保软件系统的预期行为,有一些标准定义了系统及其组件的必要质量方面(例如ISO/IEC 25010)。由于ML的性质不同,我们必须调整质量方面或添加其他方面(例如可信赖性),并且非常确切地确定哪个方面与哪个目标(例如培训数据的完整性)以及如何客观地评估对质量需求的依从性。在本文中,我们介绍了基于工业用例的ML系统的质量模型(即评估对象,质量方面和指标)的构建。该质量模型使从业人员能够客观地指定和评估此类ML系统的质量要求。将来,我们想了解不同类型的ML系统之间的术语一词如何不同,并提出了指定和评估ML系统质量的一般指南。

Nowadays, systems containing components based on machine learning (ML) methods are becoming more widespread. In order to ensure the intended behavior of a software system, there are standards that define necessary quality aspects of the system and its components (such as ISO/IEC 25010). Due to the different nature of ML, we have to adjust quality aspects or add additional ones (such as trustworthiness) and be very precise about which aspect is really relevant for which object of interest (such as completeness of training data), and how to objectively assess adherence to quality requirements. In this article, we present the construction of a quality model (i.e., evaluation objects, quality aspects, and metrics) for an ML system based on an industrial use case. This quality model enables practitioners to specify and assess quality requirements for such kinds of ML systems objectively. In the future, we want to learn how the term quality differs between different types of ML systems and come up with general guidelines for specifying and assessing qualities of ML systems.

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