Inverse barrier methods for linear programming

Inverse barrier methods for linear programming

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Article ID: iaor19971098
Country: France
Volume: 28
Issue: 2
Start Page Number: 135
End Page Number: 164
Publication Date: Apr 1994
Journal: Recherche Oprationnelle/Operations Research
Authors: , ,
Keywords: barrier function
Abstract:

In the recent interior point methods for linear programming much attention has been given to the logarithmic barrier method. In this paper the authors will analyse the class of inverse barrier methods for linear programming, in which the barrier is equ1, where equ2 is the rank of the barrier. There are many similarities with the logarithmic barrier method. The minima of an inverse barrier function for different values of the barrier parameter define a ‘central path’ dependent on r, called the r-path of the problem. For equ3 this path coincides with the central path determined by the logarithmic barrier function. The authors introduce a metric to measure the distance of a feasible point to a point on the path. They prove that in a certain region around a point on the path the Newton process converges quadratically. Moreover, outside this region, taking a step into the Newton direction decreases the barrier function value at least with a constant. The authors will derive upper bounds for the total number of iterations needed to obtain an equ4-optimal solution. Unfortunately, these bounds are not polynomial in the input length. Only if the rank r goes to zero the authors get a polynomiality result, but then they are actually working with the logarithmic barrier method.

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