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Is it possible to calculate the time complexity of genetic algorithm?

These are my parameter settings:

    Population size (P) = 100
    # of Generations (G) = 1000
    Crossover probability (Pc) = 0.5 (fixed)
    Mutation probability (Pm) = 0.01 (fixed)

Thanks

Updated:

 problem: document clustering
 Chromosome: 50 genes/chrom, allele value = integer(document index)
 crossover: one point crossover (crossover point is randomly selected)
 mutation: randomly change one gene
 termination criteria: 1000 generation

fitness: Davies–Bouldin index

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As written this is far too vague to answer. How do you evaluate fitness? How are you combining genes together? What is your termination condition? –  templatetypedef Feb 5 '12 at 1:36
    
@templatetypedef Termination condition is 1000 generations i beleive –  Luke McGregor Feb 5 '12 at 2:08
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4 Answers

isnt it something like O(P * G * O(Fitness) * ((Pc * O(crossover)) + (Pm * O(mutation))))

IE the complexity is relative to the number of items, the number of generations and the computation time per generation

If P, G, Pc, and Pm are constant that really simplifies to O( O(Fitness) * (O(mutation) + O(crossover)))

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If the number of generations and population size is constant, as long as your mutation function, crossover function, and fitness function takes a known amount of time, the big o is O(1) - it takes a constant amount of time.

Now, if you are asking what the big O would be for a population of N and a number of generations M, that is different, but as stated where you know all the variables ahead of time, the amount of time taken is constant with respect to your input.

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Genetic Algorithms are not chaotic, they are stochastic. The complexity depends on the genetic operators, their implementation (which may have a very significant effect on overall complexity), the representation of the individuals and the population, and obviously on the fitness function. Given the usual choices (point mutation, one point crossover, roulette wheel selection) a Genetic Algorithms complexity is O(g(nm + nm + n)) with g the number of generations, n the population size and m the size of the individuals. Therefore the complexity is on the order of O(gnm)).
This is of cause ignoring the fitness function, which depends on the application.

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Is it possible to calculate the time and computation complexity of genetic algorithm?

Yes, Luke & Kane's answer can work (with caveats).

However, most genetic algorithms are inherently chaotic. So calculating O() is unlikely to be useful and worse probably misleading.

There is a better way to measure the time complexity--by actually measuring the run time and averaging.

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