From concept drift to model degradation: An overview on performance-aware drift detectors
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Abstract
The dynamicity of real-world systems poses a significant challenge to deployed predictive machine learning (ML) models. Changes in the system on which the ML model has been trained may lead to performance degradation during the system’s life cycle. Recent advances that study non-stationary environments have mainly focused on identifying and addressing such changes caused by a phenomenon called concept drift. Different terms have been used in the literature to refer to the same type of concept drift and the same term for various types. This lack of unified terminology is set out to create confusion on distinguishing between different concept drift variants. In this paper, we start by grouping concept drift…
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3Topics & keywords
Topics
Keywords
- Degradation (telecommunications)
- Concept drift
- Detector
- Computer science
- Environmental science
- Data mining
- Telecommunications
UN Sustainable Development Goals
- Responsible consumption and production
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