Properties of Expected Residual Minimization Model for a Class of Stochastic Complementarity Problems
نویسندگان
چکیده
Expected residualminimization (ERM)modelwhichminimizes an expected residual function defined by anNCP function has been studied in the literature for solving stochastic complementarity problems. In this paper, we first give the definitions of stochastic P-function, stochastic P 0 -function, and stochastic uniformly P-function. Furthermore, the conditions such that the function is a stochastic P(P 0 )-function are considered. We then study the boundedness of solution set and global error bounds of the expected residual functions defined by the “Fischer-Burmeister” (FB) function and “min” function. The conclusion indicates that solutions of the ERM model are robust in the sense that they may have a minimum sensitivity with respect to random parameter variations in stochastic complementarity problems. On the other hand, we employ quasi-Monte Carlo methods and derivative-free methods to solve ERMmodel.
منابع مشابه
Matrix Linear Complementarity Problems
We consider the expected residual minimization formulation of the stochastic R0 matrix linear complementarity problem. We show that the involved matrix being a stochastic R0 matrix is a necessary and sufficient condition for the solution set of the expected residual minimization problem to be nonempty and bounded. Moreover, local and global error bounds are given for the stochastic R0 matrix li...
متن کاملExpected Residual Minimization Method for Stochastic Linear Complementarity Problems
This paper presents a new formulation for the stochastic linear complementarity problem (SLCP), which aims at minimizing an expected residual defined by an NCP function. We generate observations by the quasi-Monte Carlo methods and prove that every accumulation point of minimizers of discrete approximation problems is a minimum expected residual solution of the SLCP. We show that a sufficient c...
متن کاملStochastic R0 Matrix Linear Complementarity
We consider the expected residual minimization formulation of the stochastic R0 matrix linear complementarity problem. We show that the involved matrix being a stochastic R0 matrix is a necessary and sufficient condition for the solution set of the expected residual minimization problem to be nonempty and bounded. Moreover, local and global error bounds are given for the stochastic R0 matrix li...
متن کاملNew Restricted NCP Functions and Their Applications to Stochastic NCP and Stochastic MPEC
We focus on studying stochastic nonlinear complementarity problems (SNCP) and stochastic mathematical programs with equilibrium constraints (SMPEC). Instead of the NCP functions employed in the literature, we use the restricted NCP functions to define expected residual minimization formulations for SNCP and SMPEC. We then discuss level set conditions and error bounds of the new formulation. Num...
متن کاملSCHRIFTENREIHE DER FAKULTÄT FÜR MATHEMATIK A Note on Stability for Risk Averse Stochastic Complementarity Problems by
Introduced by Chen and Fukushima in 2005, expected residual minimization (ERM) has become an established approach to complementarity problems under stochastic uncertainty. NCP and merit functions allow to recast deterministic complementarity problems as optimization problems, where the objective function is the total residual. Based on this reformulation, the risk neutral ERM formulation aims t...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- J. Applied Mathematics
دوره 2013 شماره
صفحات -
تاریخ انتشار 2013