Title of article
Enlarging neighborhoods of interior-point algorithms for linear programming via least values of proximity measure functions Original Research Article
Author/Authors
Y.B. Zhao، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
17
From page
1033
To page
1049
Abstract
It is well known that a wide-neighborhood interior-point algorithm for linear programming performs much better in implementation than its small-neighborhood counterparts. In this paper, we provide a unified way to enlarge the neighborhoods of predictor–corrector interior-point algorithms for linear programming. We prove that our methods not only enlarge the neighborhoods but also retain the so-far best known iteration complexity and superlinear (or quadratic) convergence of the original interior-point algorithms. The idea of our methods is to use the global minimizers of proximity measure functions.
Journal title
Applied Numerical Mathematics
Serial Year
2007
Journal title
Applied Numerical Mathematics
Record number
942749
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