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A New Class of Large Neighborhood Path-Following Interior Point Algorithms for Semidefinite Optimization with $O(\sqrt{n}\log\frac{\mathrm{Tr}(X^0S^0)}{\epsilon})$ Iteration Complexity

Published: 01 September 2010 Publication History

Abstract

In this paper, we extend the Ai-Zhang direction to the class of semidefinite optimization problems. We define a new wide neighborhood $\mathcal{N}(\tau_1,\tau_2,\eta)$, and, as usual but with a small change, we make use of the scaled Newton equations for symmetric search directions. After defining the “positive part” and the “negative part” of a symmetric matrix, we recommend solving the Newton equation with its right-hand side replaced first by its positive part and then by its negative part, respectively. In such a way, we obtain a decomposition of the classical Newton direction and use different step lengths for each of them. Starting with a feasible point $(X^0,y^0,S^0)$ in $\mathcal{N}(\tau_1,\tau_2,\eta)$, the algorithm terminates in at most $O(\eta\sqrt{\kappa_{\infty}n}\log({Tr}(X^0S^0)/\epsilon))$ iterations, where $\kappa_{\infty}$ is a parameter associated with the scaling matrix $P$ and $\epsilon$ is the required precision. To our best knowledge, when the parameter $\eta$ is a constant, this is the first large neighborhood path-following interior point method (IPM) with the same complexity as small neighborhood path-following IPMs for semidefinite optimization that use the Nesterov-Todd direction. In the case where $\eta$ is chosen to be in the order of $\sqrt{n}$, our result coincides with the results for classical large neighborhood IPMs. Some preliminary numerical results also confirm the efficiency of the algorithm.

References

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Information

Published In

cover image SIAM Journal on Optimization
SIAM Journal on Optimization  Volume 20, Issue 6
August 2010
822 pages

Publisher

Society for Industrial and Applied Mathematics

United States

Publication History

Published: 01 September 2010

Author Tags

  1. interior point methods
  2. large neighborhood
  3. path-following algorithm
  4. semidefinite optimization

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  • (2021)A Second-Order Corrector Infeasible Interior-Point Method for Semidefinite Optimization Based on a Wide NeighborhoodJournal of Scientific Computing10.1007/s10915-020-01384-w86:1Online publication date: 1-Jan-2021
  • (2019)Large-Neighborhood Infeasible Predictor---Corrector Algorithm for Horizontal Linear Complementarity Problems over Cartesian Product of Symmetric ConesJournal of Optimization Theory and Applications10.1007/s10957-018-1402-6180:3(811-829)Online publication date: 1-Mar-2019
  • (2019)An Adaptive Infeasible-Interior-Point Method with the One-Norm Wide Neighborhood for Semi-definite ProgrammingJournal of Scientific Computing10.1007/s10915-018-0827-278:3(1790-1810)Online publication date: 1-Mar-2019
  • (2018)Infeasible interior-point method for symmetric optimization using a positive-asymptotic barrierComputational Optimization and Applications10.5555/3287989.328801571:2(483-508)Online publication date: 1-Nov-2018
  • (2018)A wide neighborhood primal-dual predictor-corrector interior-point method for symmetric cone optimizationNumerical Algorithms10.1007/s11075-017-0387-978:2(535-552)Online publication date: 1-Jun-2018
  • (2017)Two wide neighborhood interior-point methods for symmetric cone optimizationComputational Optimization and Applications10.1007/s10589-017-9905-x68:1(29-55)Online publication date: 1-Sep-2017
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  • (2015)A Mehrotra-type predictor-corrector infeasible-interior-point method with a new one-norm neighborhood for symmetric optimizationJournal of Computational and Applied Mathematics10.1016/j.cam.2015.01.027283:C(106-121)Online publication date: 1-Aug-2015
  • (2013)A New Wide Neighborhood Primal---Dual Infeasible-Interior-Point Method for Symmetric Cone ProgrammingJournal of Optimization Theory and Applications10.1007/s10957-013-0303-y158:3(796-815)Online publication date: 1-Sep-2013

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