One or two things we know about concept drift—a survey on monitoring in evolving environments. Part B: locating and explaining concept drift

Author:

Hinder Fabian,Vaquet Valerie,Hammer Barbara

Abstract

In an increasing number of industrial and technical processes, machine learning-based systems are being entrusted with supervision tasks. While they have been successfully utilized in many application areas, they frequently are not able to generalize to changes in the observed data, which environmental changes or degrading sensors might cause. These changes, commonly referred to as concept drift can trigger malfunctions in the used solutions which are safety-critical in many cases. Thus, detecting and analyzing concept drift is a crucial step when building reliable and robust machine learning-driven solutions. In this work, we consider the setting of unsupervised data streams which is highly relevant for different monitoring and anomaly detection scenarios. In particular, we focus on the tasks of localizing and explaining concept drift which are crucial to enable human operators to take appropriate action. Next to providing precise mathematical definitions of the problem of concept drift localization, we survey the body of literature on this topic. By performing standardized experiments on parametric artificial datasets we provide a direct comparison of different strategies. Thereby, we can systematically analyze the properties of different schemes and suggest first guidelines for practical applications. Finally, we explore the emerging topic of explaining concept drift.

Funder

European Research Council

Universitätsbibliothek Bielefeld

Publisher

Frontiers Media SA

Reference62 articles.

1. A survey of methods for time series change point detection;Aminikhanghahi;Knowl. Inf. Syst,2017

2. “Moa: massive online analysis, a framework for stream classification and clustering,”;Bifet;Proceedings of the first workshop on applications of pattern analysis,2010

3. Random forests;Breiman;Mach. Learn,2001

4. “Online and incremental machine learning approaches for IC yield improvement,”;Chen;2017 IEEE/ACM International Conference on Computer-Aided Design (ICCAD),2017

5. An information-theoretic approach to detecting changes in multidimensional data streams;Dasu;Interfaces,2006

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1. Localizing of Anomalies in Critical Infrastructure using Model-Based Drift Explanations;2024 International Joint Conference on Neural Networks (IJCNN);2024-06-30

2. Visual Analytics of Streaming Data in Concept Drift Detection;2024 11th International Conference on Electrical, Electronic and Computing Engineering (IcETRAN);2024-06-03

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