1. Probabilistic smallest enclosing ball in high dimensions via subgradient sampling
- Author
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Krivošija, Amer and Munteanu, Alexander
- Subjects
Computational Geometry (cs.CG) ,FOS: Computer and information sciences ,Computer Science - Machine Learning ,000 Computer science, knowledge, general works ,Computer Science - Data Structures and Algorithms ,Computer Science ,Computer Science - Computational Geometry ,Data Structures and Algorithms (cs.DS) ,Machine Learning (cs.LG) - Abstract
We study a variant of the median problem for a collection of point sets in high dimensions. This generalizes the geometric median as well as the (probabilistic) smallest enclosing ball (pSEB) problems. Our main objective and motivation is to improve the previously best algorithm for the pSEB problem by reducing its exponential dependence on the dimension to linear. This is achieved via a novel combination of sampling techniques for clustering problems in metric spaces with the framework of stochastic subgradient descent. As a result, the algorithm becomes applicable to shape fitting problems in Hilbert spaces of unbounded dimension via kernel functions. We present an exemplary application by extending the support vector data description (SVDD) shape fitting method to the probabilistic case. This is done by simulating the pSEB algorithm implicitly in the feature space induced by the kernel function., Comment: 20 pages; SoCG 2019 (to appear)
- Published
- 2019
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