I have a genetic algorithm that is currently using roulette wheel selection to produce a new population and I would like to change it to stochastic universal sampling.
I have a rough outline of how things are going to work here:
pointerDistance = sumFitness/popSize
start = rand.uniform(0, pointerDistance)
for i in xrange(popSize):
pointers.append(start + i*pointerDistance)
cumulativeFit = 0
newIndiv = 0
for p in pointers:
while cumulativeFit <= p:
cumulativeFit += pop[newIndiv].fitness
newPop[newIndiv] = copy.deepcopy(pop[newIndiv])
newIndiv += 1
But i'm struggling with how exactly to implement stochastic universal sampling. Does anyone know of a good source for some pseudo code, or an example?
A brief description of what stochastic universal sampling is with an example (but i'm not sure if it makes sense?):