An Algorithm for L∞ Approximation by Step Functions

Abstract

An algorithm is given for determining an optimal b-step approximation of weighted data, where the error is measured with respect to the L∞ norm. For data presorted by the independent variable the algorithm takes (n + n · b(1+ n/b)) time and (n) space. This is (n n) in the worst case and (n) when b = O(n/ n n). A minor change determines an optimal reduced isotonic regression in the same time and space bounds, and the algorithm also solves the k-center problem for 1-dimensional weighted data.

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