• Media type: Electronic Thesis; Doctoral Thesis; E-Book
  • Title: Constrained Clustering Problems and Parity Games
  • Contributor: Rösner, Clemens [Author]
  • imprint: Universitäts- und Landesbibliothek Bonn, 2019-10-23
  • Language: English
  • DOI: https://doi.org/20.500.11811/8086
  • Keywords: Paritätsspiele ; parity games ; approximation algorithm ; Approximationsalgorithmen ; Fairness ; Privacy ; Clustering
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  • Description: Clustering is a fundamental tool in data mining. It partitions points into groups (clusters) and may be used to make decisions for each point based on its group. We study several clustering objectives. We begin with studying the Euclidean k -center problem. The k -center problem is a classical combinatorial optimization problem which asks to select k centers and assign each input point in a set P to one of the centers, such that the maximum distance of any input point to its assigned center is minimized. The Euclidean k -center problem assumes that the input set P is a subset of a Euclidean space and that each location in the Euclidean space can be chosen as a center. We focus on the special case with k = 1, the smallest enclosing ball problem: given a set of points in m-dimensional Euclidean space, find the smallest sphere enclosing all the points. We combine known results about convex optimization with structural properties of the smallest enclosing ball to create a new algorithm. We show that on instances with rational coefficients our new algorithm computes the exact center of the optimal solutions and has a worst-case run time that is polynomial in the size of the input. We use the new algorithm to show that we can solve the Euclidean k -center problem in polynomial time for constant k and dimension m . The general unconstrained clustering problems are mostly very well studied. The k -center problem for example allows for elegant 2 -approximation algorithms(Gonzalez 1985, Hochbaum,Shmoys 1986). However, the situation becomes significantly more difficult when constraints are added to the problem. We first look at the fair clustering. The fairness constraint is motivated by the fact that the general process of computing a clustering may harm protected (minority) classes if the clustering algorithm does not adequately represent them in desirable clusters -- especially if the data is already biased. At NIPS 2017, Chierichetti et al. proposed a model for fair clustering requiring the representation in each ...
  • Access State: Open Access
  • Rights information: In Copyright