Lp Isotonic Regression Algorithms Using an L0 Approach

Abstract

Significant advances in flow algorithms have changed the relative performance of various approaches to algorithms for Lp isotonic regression. We show a simple plug-in method to systematically incorporate such advances, and advances in determining violator dags, with no assumptions about the algorithms' structures. The method is based on the standard algorithm for L0 (Hamming distance) isotonic regression (by finding anti-chains in a violator dag), coupled with partitioning based on binary L1 isotonic regression. For several important classes of graphs the algorithms are already faster (in O-notation) than previously published ones, close to or at the lower bound, and significantly faster than those implemented in statistical packages. We consider exact and approximate results for Lp regressions, p=0 and 1 ≤ p < ∞, and a variety of orderings.

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