The source material explores the challenges and techniques for detecting concept drift in machine learning models. It examines several methods categorized by their approach, including error rate-based, statistical process control, and distance-based methods. The sources also delve into specific techniques like ensemble learning, hybrid approaches, and adaptation strategies to handle drift in various machine learning tasks, including regression, classification, and computer vision. The authors analyze the benefits, limitations, and application scenarios of each method, emphasizing the importance of context awareness, interpretability, and real-time adaptation in addressing the dynamic nature of data streams.
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