Evolving Machine Learning: A Survey
Evolving Machine Learning: A Survey
In an era defined by rapid data evolution, traditional machine learning (ML) models often fall short in adapting to dynamic environments. Evolving Machine Learning (EML) has emerged as a critical paradigm, enabling continuous learning and adaptation in real-time data streams. This survey presents a comprehensive analysis of EML, focusing on five core challenges: data drift, concept drift, catastrophic forgetting, skewed learning, and network adaptation. We systematically review over 120 studies, categorizing state-of-the-art methods across supervised, unsupervised, and semi-supervised approaches. The survey explores diverse evaluation metrics, benchmark datasets, and real-world applications, offering a comparative lens on the effectiveness and limitations of current techniques. Additionally, we highlight the growing role of adaptive neural architectures, meta-learning, and ensemble strategies in addressing evolving data complexities. By synthesizing insights from recent literature, this work not only maps the current landscape of EML but also identifies critical gaps and opportunities for future research. Our findings aim to guide researchers and practitioners in developing robust, ethical, and scalable EML systems for real-world deployment.
Ignacio Cabrera Martin、Subhaditya Mukherjee、Almas Baimagambetov、Joaquin Vanschoren、Nikolaos Polatidis
计算技术、计算机技术
Ignacio Cabrera Martin,Subhaditya Mukherjee,Almas Baimagambetov,Joaquin Vanschoren,Nikolaos Polatidis.Evolving Machine Learning: A Survey[EB/OL].(2025-05-23)[2025-06-06].https://arxiv.org/abs/2505.17902.点此复制
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