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Age-Based Population Dynamics in Evolutionary Algorithms Lisa Guntly
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Motivation Parameter specification complicates EAs Optimal parameter values can change during a run Age is an important factor in Biology
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The Importance of Age Age significantly impacts survival in natural populations
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Methods Survival chance ( S i ) of an individual is based on age and fitness Main Equation S i F i F B S AGE Fitness of i Best Fitness
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Survival Chance from Age Age is tracked by individual, and is incremented every generation Two equations explored for S AGE Equation 1 (ABPS-AutoEA1): linear decrease S AGE 1 R A ( ) Rate of decrease from age
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Survival Chance from Age (cont’d) Equation 2 (ABPS-AutoEA2): more dynamic S AGE 1 N AG 2P AGE 2G Number of individuals in the same age group Population size Number of generations the EA will run
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Survival Chance from Age (cont’d) Effects of –More individuals of the same age will decrease their survival chance –Age will decrease survival chance relative to the maximum age (G) N AG SiSi S AGE 1 N AG 2P AGE 2G
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Experimental Setup Testing done on TSP (size 20/40/80) Offspring size is constant Compared to a manually tuned EA Examine effects of –Initial population size –Offspring size Tracked population statistics –Size –Average age
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Performance Results - TSP size 20 Average over 30 runs ABPS-AutoEA1 - ABPS-AutoEA2 -
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Performance Results - TSP size 40 Average over 30 runs ABPS-AutoEA1 - ABPS-AutoEA2 -
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Initial Population Size Effect 3 different runs
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Tracking Population Size and Average Age Same single run
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Equation with Fitness Scaling Attempt to fix the lack of selection pressure from fitness New Main Equation S i F i F B F W F W S AGE S i F i F B S Fitness of i Best Fitness Worst Fitness Fitness Scaling
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Initial Performance Analysis from Fitness Scaling Equation Average over 30 runs using
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Initial Performance Analysis from Fitness Scaling Equation (cont’d) Elitism improved performance slightly Roulette wheel (fitness proportional) parent selection improved performance on a larger TSPs but performed worse on smaller TSPs Independence from initial population size was maintained Adjustment of population size during the run was improved
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Future Work Further exploration of fitness scaling methods Test on additional problems Compare to other dynamic population sizing schemes Implement age-based offspring sizing
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