Skema > Faculty and Research > Publication-details
 

FACULTY AND RESEARCH

 

 

Publication

Sample Average Approximation Method for Chance Constrained Programming: Theory and Applications
2009, Journal of Optimization Theory and Applications, 142(2), pp.399-416
Chance constraints
Sample average approximation
Portfolio selection
Abstract
We study sample approximations of chance constrained problems. In particular, we consider the sample average approximation (SAA) approach and discuss the convergence properties of the resulting problem. We discuss how one can use the SAA method to obtain good candidate solutions for chance constrained problems. Numerical experiments are performed to correctly tune the parameters involved in the SAA. In addition, we present a method for constructing statistical lower bounds for the optimal value of the considered problem and discuss how one should tune the underlying parameters. We apply the SAA to two chance constrained problems. The first is a linear portfolio selection problem with returns following a multivariate lognormal distribution. The second is a joint chance constrained version of a simple blending problem.

Why choose SKEMA?
At the top of French and international rankings SEE RANKINGS
A global business school SEE SKEMA NEWS
A wide range of programmes COMPARE