机器学习模型的非功能属性评价方法

M. Anisetti, C. Ardagna, E. Damiani, Paolo G. Panero
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引用次数: 6

摘要

机器学习(ML)在许多关键领域和应用场景中的广泛传播已经彻底改变了现代IT系统的实现和工作。现代系统的行为通常依赖于ML模型的行为,这些模型被视为黑盒,因此基于不可预测的推理做出自动决策。在这种情况下,越来越需要验证ML模型的非功能属性,例如公平性和隐私性,以提供经过认证的基于ML的应用程序和服务。在本文中,我们提出了一种基于Multi-Armed Bandit的方法来评估ML模型的非功能属性。我们的方法采用汤普森抽样、蒙特卡罗模拟和价值保留。提出了一个真实场景中的实验评估,以证明我们的方法在评估不同ML模型的公平性方面的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Methodology for Non-Functional Property Evaluation of Machine Learning Models
The pervasive diffusion of Machine Learning (ML) in many critical domains and application scenarios has revolutionized implementation and working of modern IT systems. The behavior of modern systems often depends on the behavior of ML models, which are treated as black boxes, thus making automated decisions based on inference unpredictable. In this context, there is an increasing need of verifying the non-functional properties of ML models, such as, fairness and privacy, to the aim of providing certified ML-based applications and services. In this paper, we propose a methodology based on Multi-Armed Bandit for evaluating non-functional properties of ML models. Our methodology adopts Thompson sampling, Monte Carlo Simulation, and Value Remaining. An experimental evaluation in a real-world scenario is presented to prove the applicability of our approach in evaluating the fairness of different ML models.
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