专题:Adaptation to Concept Drift in Data Streams

This cluster of papers focuses on the adaptation to concept drift in data streams, particularly in the context of ensemble learning, adaptive algorithms, and online learning. It addresses challenges such as change detection, class imbalance, and incremental learning in streaming data environments.
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近5年高被引文献
Particle Swarm Optimization Algorithm and Its Applications: A Systematic Review

review Full Text OpenAlex 1662 FWCI205.1696

A Survey of Ensemble Learning: Concepts, Algorithms, Applications, and Prospects

article Full Text OpenAlex 1097 FWCI134.6555

AI-Based Modeling: Techniques, Applications and Research Issues Towards Automation, Intelligent and Smart Systems

review Full Text OpenAlex 1035 FWCI102.8964

A comprehensive review on ensemble deep learning: Opportunities and challenges

review Full Text OpenAlex 992 FWCI167.2637

A comprehensive survey of clustering algorithms: State-of-the-art machine learning applications, taxonomy, challenges, and future research prospects

article Full Text OpenAlex 855 FWCI109.9964

A comparative analysis of K-Nearest Neighbor, Genetic, Support Vector Machine, Decision Tree, and Long Short Term Memory algorithms in machine learning

article Full Text OpenAlex 714 FWCI91.4328

Crayfish optimization algorithm

article Full Text OpenAlex 557 FWCI94.012

Challenges in Deploying Machine Learning: A Survey of Case Studies

review Full Text OpenAlex 537 FWCI63.1156

Reinforcement learning algorithms: A brief survey

article Full Text OpenAlex 520 FWCI87.767

Model-based Reinforcement Learning: A Survey

article Full Text OpenAlex 469 FWCI65.6565