A class of optimization problems motivated by rank estimators in robust regression
A rank estimator in robust regression is a minimizer of a function which depends (in addition to other factors) on the ordering of residuals but not on their values. Here we focus on the optimization aspects of rank estimators. We distinguish two classes of functions: the class with a continuous and...
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Zusammenfassung: | A rank estimator in robust regression is a minimizer of a function which
depends (in addition to other factors) on the ordering of residuals but not on
their values. Here we focus on the optimization aspects of rank estimators. We
distinguish two classes of functions: the class with a continuous and convex
objective function (CCC), which covers the class of rank estimators known from
statistics, and also another class (GEN), which is far more general. We propose
efficient algorithms for both classes. For GEN we propose an enumerative
algorithm that works in polynomial time as long as the number of regressors is
O(1). The proposed algorithm utilizes the special structure of arrangements of
hyperplanes that occur in our problem and is superior to other known algorithms
in this area. For the continuous and convex case, we propose an unconditionally
polynomial algorithm finding the exact minimizer, unlike the heuristic or
approximate methods implemented in statistical packages. |
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DOI: | 10.48550/arxiv.1910.05826 |