New Approximation Algorithms for Minimum Enclosing Convex Shapes

Given points in a dimensional Euclidean space, the Minimum Enclosing Ball (MEB) problem is to find the ball with the smallest radius which contains all points. We give a approximation algorithm for producing an enclosing ball whose radius is at most away from the optimum (where is an upper bound on the norm of the points). This improves existing results using \emph{coresets}, which yield a greedy algorithm. Finding the Minimum Enclosing Convex Polytope (MECP) is a related problem wherein a convex polytope of a fixed shape is given and the aim is to find the smallest magnification of the polytope which encloses the given points. For this problem we present a approximation algorithm, where is the number of faces of the polytope. Our algorithms borrow heavily from convex duality and recently developed techniques in non-smooth optimization, and are in contrast with existing methods which rely on geometric arguments. In particular, we specialize the excessive gap framework of \citet{Nesterov05a} to obtain our results.
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