This paper presents a practical methodology of improving the efficiency of Genetic Algorithms through tuning the factors significantly affecting GA performance. This methodology is based on the methods of statistical inference and has been successfully applied to both binary- and integerencoded Genetic Algorithms that search for good chemotherapeutic schedules.
Andrei Petrovski, Alexander E. I. Brownlee, John A