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Software Testing for Machine Learning

机译:机器学习软件测试

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摘要

Machine learning has become prevalent across a wide variety of applications. Unfortunately, machine learning has also shown to be susceptible to deception, leading to errors, and even fatal failures. This circumstance calls into question the widespread use of machine learning, especially in safety-critical applications, unless we are able to assure its correctness and trustworthiness properties. Software verification and testing are established technique for assuring such properties, for example by detecting errors. However, software testing challenges for machine learning are vast and profuse - yet critical to address. This summary talk discusses the current state-of-the-art of software testing for machine learning. More specifically, it discusses six key challenge areas for software testing of machine learning systems, examines current approaches to these challenges and highlights their limitations. The paper provides a research agenda with elaborated directions for making progress toward advancing the state-of-the-art on testing of machine learning.
机译:机器学习跨各种应用普遍存在。不幸的是,机器学习也表明易于欺骗,导致错误,甚至致命失败。这种情况呼吁质疑机器学习的广泛使用,特别是在安全关键型应用中,除非我们能够确保其正确性和可靠性的特性。例如,建立了软件验证和测试,以确保这些属性,例如通过检测错误。但是,机器学习的软件测试挑战是巨大而丰富的 - 对于地址至关重要。此摘要谈话讨论了当前的机器学习软件测试状态。更具体地说,它讨论了机器学习系统软件测试的六个关键挑战领域,检查目前对这些挑战的方法,并突出了它们的局限性。本文提供了一项研究议程,具有精心制定的方向,以实现推进机器学习的最新技术的进展。

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