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   complexity analysis of interior-point methods yielding the best known iteration bound for semidefinite optimization  
   
نویسنده louiza derbal ,zakia kebbiche ,mousaab bouafia
منبع international journal of nonlinear analysis and applications - 2023 - دوره : 14 - شماره : 5 - صفحه:287 -301
چکیده    The purpose of this paper is to obtain new complexity results for solving the semidefinite optimization (sdo) problem. we define a new proximity function for the sdo by a new kernel function with an efficient logarithmic barrier term. furthermore, we formulate an algorithm for the large and small-update primal-dual interior-point method (ipm) for the sdo. it is shown that the best result of iteration bounds for large-update methods and small-update methods can be achieved, namely o ( qn q+1 2q log n ϵ ) for large-update and o(q2√ n log n ϵ ) for small-update methods, where q > 1. the analysis in this paper is new and different from the one using for lo. several new tools and techniques are derived in this paper. furthermore, numerical tests to investigate the behavior of the algorithm so as to be compared with other approaches.
کلیدواژه kernel function ,proximity function ,semidefinite optimization ,complexity analysis ,primal-dual interior-point methods
آدرس ferhat abbas university, faculty of science, fundamental and numerical mathematics laboratory, department of mathematics, algeria, ferhat abbas university, faculty of science, fundamental and numerical mathematics laboratory, department of mathematics, algeria, university of 8 may 1945 guelma, algeria
پست الکترونیکی bouafia.mousaab@univ-guelma.dz
 
     
   
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