Unified Analysis of Kernel-Based Interior-Point Methods for $P_*(\kappa)$-Linear Complementarity Problems
Author(s) -
Goran Lešaja,
C. Roos
Publication year - 2010
Publication title -
siam journal on optimization
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.066
H-Index - 136
eISSN - 1095-7189
pISSN - 1052-6234
DOI - 10.1137/090766735
Subject(s) - mathematics , univariate , interior point method , logarithm , kernel (algebra) , linear complementarity problem , class (philosophy) , mathematical optimization , discrete mathematics , mathematical analysis , multivariate statistics , nonlinear system , computer science , statistics , physics , quantum mechanics , artificial intelligence
We present an interior-point method for the P?(?)-linear complementarity problem (LCP) that is based on barrier functions which are defined by a large class of univariate functions called eligible kernel functions. This class is fairly general and includes the classical logarithmic function and the self-regular functions, as well as many non-self-regular functions as special cases. We provide a unified analysis of the method and give a general scheme on how to calculate the iteration bounds for the entire class. We also calculate the iteration bounds of both long-step and short-step versions of the method for several specific eligible kernel functions. For some of them we match the best known iteration bounds for the long-step method, while for the short-step method the iteration bounds are of the same order of magnitude. As far as we know, this is the first paper that provides a unified approach and comprehensive treatment of interior-point methods for P?(?)-LCPs based on the entire class of eligible kernel functions
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