2021
DOI: 10.48550/arxiv.2104.14977
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Linear Convergence of the Subspace Constrained Mean Shift Algorithm: From Euclidean to Directional Data

Abstract: This paper studies linear convergence of the subspace constrained mean shift (SCMS) algorithm, a well-known algorithm for identifying a density ridge defined by a kernel density estimator. By arguing that the SCMS algorithm is a special variant of a subspace constrained gradient ascent (SCGA) algorithm with an adaptive step size, we derive linear convergence of such SCGA algorithm. While the existing research focuses mainly on density ridges in the Euclidean space, we generalize density ridges and the SCMS alg… Show more

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