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A Framework to Monitor Machine Learning Systems Using Concept Drift Detection

机译:使用概念漂移检测监控机器学习系统的框架

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As more and more machine learning based systems are being deployed in industry, monitoring of these systems is needed to ensure they perform in the expected way. In this article we present a framework for such a monitoring system. The proposed system is designed and deployed at Mastercard. This system monitors other machine learning systems that are deployed for use in production. The monitoring system performs concept drift detection by tracking the machine learning system's inputs and outputs independently. Anomaly detection techniques are employed in the system to provide automatic alerts. We also present results that demonstrate the value of the framework. The monitoring system framework and the results are the main contributions in this article.
机译:随着行业中越来越多的基于机器学习的系统被部署,需要监视这些系统以确保它们以预期的方式运行。在本文中,我们提出了一种用于此类监视系统的框架。拟议的系统是在万事达卡上设计和部署的。该系统监视部署在生产中使用的其他机器学习系统。监视系统通过独立跟踪机器学习系统的输入和输出来执行概念漂移检测。系统中采用异常检测技术来提供自动警报。我们还提供了证明框架价值的结果。监视系统框架和结果是本文的主要贡献。

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