ARGUS: Adaptive Rotation-Invariant Geometric Unsupervised System
Anantha Sharma
Main:23 Pages
Bibliography:1 Pages
Appendix:3 Pages
Abstract
Detecting distributional drift in high-dimensional data streams presents fundamental challenges: global comparison methods scale poorly, projection-based approaches lose geometric structure, and re-clustering methods suffer from identity instability. This paper introduces Argus, A framework that reconceptualizes drift detection as tracking local statistics over a fixed spatial partition of the data manifold.
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