CoMTE: Counterfactual Explanations for Multivariate Time Series.

E. Ates, Burak Aksar, Ayse K. Coskun, V. Leung
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引用次数: 1

Abstract

Multivariate time series are used in many science and engineering domains, including health-care, astronomy, and high-performance computing. A recent trend is to use machine learning (ML) to process this complex data and these ML-based frameworks are starting to play a critical role for a variety of applications. However, barriers such as user distrust or difficulty of debugging need to be overcome to enable widespread adoption of such frameworks in production systems. To address this challenge, we propose a novel explainability technique, CoMTE, that provides counterfactual explanations for supervised machine learning frameworks on multivariate time series data. Using various machine learning frameworks and data sets, we compare CoMTE with several state-of-the-art explainability methods and show that we outperform existing methods in comprehensibility and robustness. We also show how CoMTE can be used to debug machine learning frameworks and gain a better understanding of the underlying multivariate time series data.
多元时间序列的反事实解释。
多变量时间序列用于许多科学和工程领域,包括医疗保健、天文学和高性能计算。最近的一个趋势是使用机器学习(ML)来处理这些复杂的数据,这些基于ML的框架开始在各种应用程序中发挥关键作用。但是,需要克服用户不信任或调试困难等障碍,才能在生产系统中广泛采用此类框架。为了应对这一挑战,我们提出了一种新的可解释性技术,CoMTE,它为多元时间序列数据上的监督机器学习框架提供了反事实解释。使用各种机器学习框架和数据集,我们将CoMTE与几种最先进的可解释性方法进行比较,并表明我们在可理解性和鲁棒性方面优于现有方法。我们还展示了如何使用CoMTE来调试机器学习框架,并更好地理解底层的多变量时间序列数据。
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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