Unveiling the Robustness of Machine Learning Families

Raül Fabra-Boluda, Cèsar Ferri, M. J. Ramírez-Quintana, Fernando Martínez-Plumed
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Abstract

The evaluation of machine learning systems has typically been limited to performance measures on clean and curated datasets, which may not accurately reflect their robustness in real-world situations where data distribution can vary from learning to deployment, and where truthfully predict some instances could be more difficult than others. Therefore, a key aspect in understanding robustness is instance difficulty, which refers to the level of unexpectedness of system failure on a specific instance. We present a framework that evaluates the robustness of different machine learning models using Item Response Theory-based estimates of instance difficulty for supervised tasks. This framework evaluates performance deviations by applying perturbation methods that simulate noise and variability in deployment conditions. Our findings result in the development of a comprehensive taxonomy of machine learning techniques, based on both the robustness of the models and the difficulty of the instances, providing a deeper understanding of the strengths and limitations of specific families of machine learning models. This study is a significant step towards exposing vulnerabilities of particular families of machine learning models.
揭示机器学习家族的鲁棒性
对机器学习系统的评估通常局限于对干净且经过精心策划的数据集进行性能测量,这可能无法准确反映其在现实世界中的鲁棒性,因为在现实世界中,数据分布可能因学习和部署而异,而且如实预测某些实例可能比预测其他实例更加困难。因此,理解鲁棒性的一个关键方面是实例难度,它指的是系统在特定实例上发生故障的意外程度。我们提出了一个框架,利用基于项目反应理论(Item Response Theory)的实例难度估算来评估不同机器学习模型的鲁棒性。该框架通过应用扰动方法来模拟部署条件中的噪声和变异性,从而评估性能偏差。我们的研究结果基于模型的鲁棒性和实例的难度,对机器学习技术进行了全面分类,从而加深了对特定机器学习模型系列的优势和局限性的理解。这项研究在揭示特定机器学习模型系列的漏洞方面迈出了重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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