A new large-update interior point algorithm for P∗(κ) LCPs based on kernel functions

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In this paper we propose a new large-update primal-dual interior point algorithm for P∗(κ) linear complementarity problems (LCPs). Recently, Peng et al. introduced self-regular barrier functions for primal-dual interior point methods (IPMs) for linear optimization (LO) problems and reduced the gap between the practical behavior of the algorithm and its theoretical worst case complexity. We introduce a new class of kernel functions which is not logarithmic barrier nor self-regular in the complexity analysis of interior point method (IPM) for P∗(κ) linear complementarity problem (LCP). New search directions and proximity measures are proposed based on the kernel function. We showed that if a strictly feasible starting point is available, then the new large-update primal-dual interior point algorithms for solving P∗(κ) LCPs have the polynomial complexity Oq32(1+2κ)n(logn)q+1qlognϵ which is better than the classical large-update primal-dual algorithm based on the classical logarithmic barrier function.

论文关键词:Large-update interior point method,Kernel function,Complexity,Polynomial algorithm,Linear complementarity problem

论文评审过程:Available online 14 June 2006.

论文官网地址:https://doi.org/10.1016/j.amc.2006.04.060