
doi: 10.1145/2523813
Concept drift primarily refers to an online supervised learning scenario when the relation between the input data and the target variable changes over time. Assuming a general knowledge of supervised learning in this article, we characterize adaptive learning processes; categorize existing strategies for handling concept drift; overview the most representative, distinct, and popular techniques and algorithms; discuss evaluation methodology of adaptive algorithms; and present a set of illustrative applications. The survey covers the different facets of concept drift in an integrated way to reflect on the existing scattered state of the art. Thus, it aims at providing a comprehensive introduction to the concept drift adaptation for researchers, industry analysts, and practitioners.
ta113, ta112, ta213, Research exposition (monographs, survey articles) pertaining to computer science, Learning and adaptive systems in artificial intelligence, data streams, adaptive learning, concept drift, ta5141, ta518, change detection, ta515
ta113, ta112, ta213, Research exposition (monographs, survey articles) pertaining to computer science, Learning and adaptive systems in artificial intelligence, data streams, adaptive learning, concept drift, ta5141, ta518, change detection, ta515
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