桥接模糊测试和变形测试用于机器学习分类

Dongsu Kang
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引用次数: 0

摘要

人工智能(AI)内置的消费电子产品很受欢迎,但在现有的性能指标下,很难对基于AI的系统进行测试和评估。尽管基于人工智能的系统在软件中实现具有灵活性、偏差和非确定性等特性,但它们也可能遭受与其他软件相同的缺陷。这就是为什么在测试基于人工智能的系统时需要新的软件测试方法。因此,本文提出了一种介于模糊测试和变质测试之间的桥梁方法,专注于机器学习的分类。这种方法可以作为训练数据分类的测试oracle。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bridging Fuzz Testing and Metamorphic Testing for Classification of Machine Learning
Artificial Intelligence (AI) built-in Consumer Electronics is popular, but it is hard to test and evaluate AI-based system with the existing performance metrics. Even though AI-based systems are implemented in software with flexibility, bias and non-determinism property etc., they can suffer the same defects as other software. That is why new software testing approaches are needed when testing AI-based systems. Therefore, this paper proposes a bridging approach between fuzz testing and metamorphic testing focus on the classification of machine learning. This approach can be used as a test oracle for classification of training data.
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