 
                                                                                | Article ID: | iaor20126100 | 
| Volume: | 200 | 
| Issue: | 1 | 
| Start Page Number: | 171 | 
| End Page Number: | 182 | 
| Publication Date: | Nov 2012 | 
| Journal: | Annals of Operations Research | 
| Authors: | Prkopa Andrs, Terlaky Tams, Dek Istvn, Plik Imre | 
| Keywords: | programming: probabilistic | 
The following question arises in stochastic programming: how can one approximate a noisy convex function with a convex quadratic function that is optimal in some sense. Using several approaches for constructing convex approximations we present some optimization models yielding convex quadratic regressions that are optimal approximations in