The prototypical structure of evolutionary algorithms are presented, along with the background context of direct search metaheuristics (including tabu search). Preparing for the introduction of the genetic algorithm in the next lecture, basic biological terms from population genetics are covered, culminating in a brief discussion of genetic drift and how it applies to evolutionary algorithms for optimization.
Archived lectures from graduate course on nature-inspired metaheuristics given at Arizona State University by Ted Pavlic
Wednesday, January 15, 2020
Lecture 1B: Basics of Evolutionary Algorithms and Population Genetics (2020-01-15)
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Tempe, AZ, USA
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