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Density Level Set Estimation on Manifolds with DBSCAN

10 March 2017
Heinrich Jiang
ArXiv (abs)PDFHTML
Abstract

We show that DBSCAN can estimate the connected components of the λ\lambdaλ-density level set {x:f(x)≥λ}\{ x : f(x) \ge \lambda\}{x:f(x)≥λ} given nnn i.i.d. samples from an unknown density fff. We characterize the regularity of the level set boundaries using parameter β>0\beta > 0β>0 and analyze the estimation error under the Hausdorff metric. When the data lies in RD\mathbb{R}^DRD we obtain a rate of O~(n−1/(2β+D))\widetilde{O}(n^{-1/(2\beta + D)})O(n−1/(2β+D)), which matches known lower bounds up to logarithmic factors. When the data lies on an embedded unknown ddd-dimensional manifold in RD\mathbb{R}^DRD, then we obtain a rate of O~(n−1/(2β+d⋅max⁡{1,β}))\widetilde{O}(n^{-1/(2\beta + d\cdot \max\{1, \beta \})})O(n−1/(2β+d⋅max{1,β})). Finally, we provide adaptive parameter tuning in order to attain these rates with no a priori knowledge of the intrinsic dimension, density, or β\betaβ.

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