Title :
On some difficulties in local evolutionary search
Author :
Voigt, Hans-Michael
Author_Institution :
Gesellschaft zur Forderung Angewandter Inf., Berlin, Germany
Abstract :
We consider the very simple problem of optimizing a stationary unimodal function over Rn without using analytical gradient information. There exist numerous algorithms from mathematical programming to evolutionary algorithms for this problem. We have a closer look at advanced evolution strategies (GSA, CMA), the evolutionary gradient search algorithm (EGS), local search enhancement by random memorizing (LSERM), and the simple (1+1)-evolution strategy. These approaches show different problem-solving capabilities for different test functions. We introduce different measures which reflect certain aspects of what might be seen as the problem difficulty. Based on these measures it is possible to characterize the weak and strong points of the approaches which may lead to even more advanced algorithms
Keywords :
algorithm theory; evolutionary computation; search problems; CMA; GSA; analytical gradient information; evolutionary algorithms; evolutionary gradient search algorithm; local evolutionary search; local search enhancement by random memorizing; mathematical programming; problem-solving capabilities; simple (1+1)-evolution strategy; stationary unimodal function; Atomic beams; Atomic measurements; Calibration; Evolutionary computation; Laser modes; Laser tuning; Physics; Plasma measurements; Spectroscopy; Testing;
Conference_Titel :
Evolutionary Computation, 1999. CEC 99. Proceedings of the 1999 Congress on
Conference_Location :
Washington, DC
Print_ISBN :
0-7803-5536-9
DOI :
10.1109/CEC.1999.782012