AI RESEARCH
Autonomous Drift Learning in Data Streams: A Unified Perspective
arXiv CS.LG
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ArXi:2605.01295v1 Announce Type: new In the pursuit of autonomous learning systems, the foundational assumption of stationarity, the premise that data distributions and model behaviors remain constant, is fundamentally untenable. Historically, the research community has addressed non-stationary environments almost exclusively under the scope of concept drift, focusing primarily on temporal shifts in streams. However, as learning systems become increasingly autonomous and complex, merely adapting to temporal non-stationarity is no longer sufficient.