TY - JOUR
T1 - Variable programming
T2 - A generalized minimax problem. Part II: Algorithms
AU - Jiao, Yong Chang
AU - Leung, Yee
AU - Xu, Zongben
AU - Zhang, Jiang She
PY - 2005/3
Y1 - 2005/3
N2 - In this part of the two-part series of papers, algorithms for solving some variable programming (VP) problems proposed in Part I are investigated. It is demonstrated that the non-differentiability and the discontinuity of the maximum objective function, as well as the summation objective function in the VP problems constitute difficulty in finding their solutions. Based on the principle of statistical mechanics, we derive smooth functions to approximate these non-smooth objective functions with specific activated feasible sets. By transforming the minimax problem and the corresponding variable programming problems into their smooth versions we can solve the resulting problems by some efficient algorithms for smooth functions. Relevant theoretical underpinnings about the smoothing techniques are established. The algorithms, in which the minimization of the smooth functions is carried out by the standard quasi-Newton method with BFGS formula, are tested on some standard minimax and variable programming problems. The numerical results show that the smoothing techniques yield accurate optimal solutions and that the algorithms proposed are feasible and efficient.
AB - In this part of the two-part series of papers, algorithms for solving some variable programming (VP) problems proposed in Part I are investigated. It is demonstrated that the non-differentiability and the discontinuity of the maximum objective function, as well as the summation objective function in the VP problems constitute difficulty in finding their solutions. Based on the principle of statistical mechanics, we derive smooth functions to approximate these non-smooth objective functions with specific activated feasible sets. By transforming the minimax problem and the corresponding variable programming problems into their smooth versions we can solve the resulting problems by some efficient algorithms for smooth functions. Relevant theoretical underpinnings about the smoothing techniques are established. The algorithms, in which the minimization of the smooth functions is carried out by the standard quasi-Newton method with BFGS formula, are tested on some standard minimax and variable programming problems. The numerical results show that the smoothing techniques yield accurate optimal solutions and that the algorithms proposed are feasible and efficient.
KW - Minimax
KW - Smooth optimization
KW - Statistical mechanics principle
KW - Variable programming
UR - https://www.scopus.com/pages/publications/24044536577
U2 - 10.1007/s10589-005-4617-z
DO - 10.1007/s10589-005-4617-z
M3 - 文章
AN - SCOPUS:24044536577
SN - 0926-6003
VL - 30
SP - 263
EP - 295
JO - Computational Optimization and Applications
JF - Computational Optimization and Applications
IS - 3
ER -