Ozden, MufitHo, Yu-Chi2008-07-222013-07-102008-07-222013-07-101999-12-012007-11-26http://hdl.handle.net/2374.MIA/210We build a probabilistic solution generator using the learning automata theory, which can generate a small set of "good enough" designs with a predetermined high probability. The main goal of our work is to reduce a large design population to a much smaller subset of good designs that can be analyzed thoroughly in a subsequent simulation study to identify the best design among them. In the process of building the solution generator, a rough-cut design evaluation method with a high noise error is employed in order to screen designs very rapidly _ may it be an approximate method, a heuristic approach, or short simulation runs. The solution generator has been applied successfully to several serious test problems with noisy objectives.simulationstochastic optimizationordinal optimizationlearning automata theoryA Probabilistic Solution Generator of Good Enough Designs for SimulationText