New complexity analysis of IIPMs for linear optimization based on a specific self-regular function
نویسندگان
چکیده
Primal-dual Interior-Point Methods (IPMs) have shown their ability in solving large classes of optimization problems efficiently. Feasible IPMs require a strictly feasible starting point to generate the iterates that converge to an optimal solution. The self-dual embedding model provides an elegant solution to this problem with the cost of slightly increasing the size of the problem. On the other hand, Infeasible Interior Point Methods (IIPMs) can be initiated by any positive vector, and thus are popular in IPM softwares. In this paper we propose an adaptive large-update IIPM based on a specific self-regular proximity function, with barrier degree 1 + log n, that operates in the infinity neighborhood of the central path. An O ( n 3 2 log n log n2 ) worst-case iteration bound of our new algorithm is established. This iteration bound improves the so far best O ( n2 log n2 ) iterations bound of IIPMs in a large neighborhood of the central path.
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ورودعنوان ژورنال:
- European Journal of Operational Research
دوره 186 شماره
صفحات -
تاریخ انتشار 2008