Behavioral measures and their correlation with IPM iteration counts on semi-definite programming problems

被引:0
作者
Robert M. Freund
Fernando Ordóñez
Kim-Chuan Toh
机构
[1] MIT Sloan School of Management,Industrial and Systems Engineering
[2] University of Southern California,Department of Mathematics
[3] National University of Singapore,undefined
[4] Singapore-MIT Alliance,undefined
来源
Mathematical Programming | 2007年 / 109卷
关键词
Behavioral measure; Condition number; Degeneracy; Complementarity; Interior-point method; Semi-definite programming; 90-04; 90C22; 90C60; 90C51;
D O I
暂无
中图分类号
学科分类号
摘要
We study four measures of problem instance behavior that might account for the observed differences in interior-point method (IPM) iterations when these methods are used to solve semidefinite programming (SDP) problem instances: (i) an aggregate geometry measure related to the primal and dual feasible regions (aspect ratios) and norms of the optimal solutions, (ii) the (Renegar-) condition measure C(d) of the data instance, (iii) a measure of the near-absence of strict complementarity of the optimal solution, and (iv) the level of degeneracy of the optimal solution. We compute these measures for the SDPLIB suite problem instances and measure the sample correlation (CORR) between these measures and IPM iteration counts (solved using the software SDPT3) when these measures have finite values. Our conclusions are roughly as follows: the aggregate geometry measure is highly correlated with IPM iterations (CORR = 0.901), and provides a very good explanation of IPM iterations, particularly for problem instances with solutions of small norm and aspect ratio. The condition measure C(d) is also correlated with IPM iterations, but less so than the aggregate geometry measure (CORR = 0.630). The near-absence of strict complementarity is weakly correlated with IPM iterations (CORR = 0.423). The level of degeneracy of the optimal solution is essentially uncorrelated with IPM iterations.
引用
收藏
页码:445 / 475
页数:30
相关论文
共 38 条
  • [1] Alizadeh F.(1997)Complementarity and nondegeneracy in semidefinite programming Math. Program. 77 111-128
  • [2] Haeberly J.P.A.(1998)Primal-dual interior-point methods for semidefinite programming: convergence rates, stability and numerical results SIAM J. Optim. 8 746-768
  • [3] Overton M.L.(2006)Computation of condition numbers for linear programming problems using Peña’s method Optim. Methods. Softw. 21 419-443
  • [4] Alizadeh F.(2004)Complexity of convex optimization using geometry-based measures and a reference point Math. Program. 99 197-221
  • [5] Haeberly J.P.A.(1999)Some characterizations and properties of the “distance to ill-posedness" and the condition measure of a conic linear system Math. Program. 86 225-260
  • [6] Overton M.L.(2003)On the complexity of computing estimates of condition measures of a conic linear system Math. Oper. Rese. 28 625-648
  • [7] Chai J.(1999)On the local convergence of a predictor-corrector method for semidefinite programming SIAM J. Optim 10 195-210
  • [8] Toh K.(1998)Local convergence of predictor–corrector infeasible-interior-point algorithms for sdps and sdlcps Math. Program. 80 129-160
  • [9] Freund R.M.(2005)Error bounds and limiting behavior of weighted paths associated with the sdp map SIAM J. Optim. 15 348-374
  • [10] Freund R.M.(1998)Superlinear convergence of a symmetric primal-dual path following algorithm for semidefinite programming SIAM J. Optim. 8 59-81