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Least absolute value regression: a special case of piecewise linear minimization
Authors:Richard H. Bartels  Andrew R. Conn
Affiliation:1. The Johns Hopkins University , Baltimore, Maryland;2. University of Waterloo , Waterloo, Ontario
Abstract:The Barrodale and Roberts algorithm for least absolute value (LAV) regression and the algorithm proposed by Bartels and Conn both have the advantage that they are often able to skip across points at which the conventional simplex-method algorithms for LAV regression would be required to carry out an (expensive) pivot operation.

We indicate here that this advantage holds in the Bartels-Conn approach for a wider class of problems: the minimization of piecewise linear functions. We show how LAV regression, restricted LAV regression, general linear programming and least maximum absolute value regression can all be easily expressed as piecewise linear minimization problems.
Keywords:L1 estimation  L estimation  least maximum absolute value regression  restricted regression  linear programming
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