551 reputation
1618
bio website blastbay.com
location Sweden
age
visits member for 3 years, 6 months
seen Jun 12 at 9:55

I am a blind developer primarily working in C++ under Windows, though I do use Linux from time to time when I need to do cross platform work. When I'm not coding I like to write music in my home studio, sing, and continue my eternal quest for new kebab restaurants.


Sep
24
awarded  Autobiographer
Jul
2
awarded  Curious
Jun
8
awarded  Notable Question
Jun
2
awarded  Popular Question
May
26
asked Streaming dynamically generated audio to the web
Feb
19
awarded  Popular Question
Jan
20
awarded  Yearling
Dec
12
awarded  Popular Question
Dec
8
accepted What does the mutation rate actually refer to in a genetic algorithm?
Dec
8
comment What does the mutation rate actually refer to in a genetic algorithm?
Ah, now that makes more sense. Thank you! And to be clear, I store each allele as a binary bit. So I will generate a new random number for each bit, and if the random number falls below the mutation rate, I flip the bit. Is that reasonable?
Dec
8
comment What does the mutation rate actually refer to in a genetic algorithm?
I have my chromosome bit string divided into genes, so would you apply the mutation rate to each gene or to the entire chromosome string? In both cases, wouldn't you want to scale the mutation rate by either the length of a gene or the length of a chromosome respectively? One approach I can think of is to make the mutation rate the probability that a given gene in a chromosome is modified, and if the random value falls within that bracket, flip the alleles/bits in the gene. Does that sound reasonable, or are there better ways of doing it?
Dec
8
asked What does the mutation rate actually refer to in a genetic algorithm?
Dec
5
accepted Crossover technique in a genetic algorithm
Dec
5
comment Crossover technique in a genetic algorithm
So I use gene boundaries and always swap entire genes, not bits. That's simple enough. Thanks!
Dec
5
asked Crossover technique in a genetic algorithm
Nov
30
accepted How to perform rank based selection in a genetic algorithm?
Nov
30
comment How to perform rank based selection in a genetic algorithm?
So even if it is not actually roulette selection as it's not refering to the fitness, am I right in thinking that I could use the same principle as in roulette to get the final number of parents? I am going to accept your answer, and I want to say that I appreciate you taking the extra time to answer my questions. I am a complete beginner in this field, so I am going to continue investigating on my own based on the information you've given me. Thanks once again!
Nov
30
comment How to perform rank based selection in a genetic algorithm?
Couldn't I just use roulette to do the weighted randomization? Wouldn't this work since I update the fitness to actually be the rank instead of the original absolute fitness? Also, can you please elaborate a little on the term normalized in this context? How do I normalize the list after sorting it and setting the ranks? Currently, after running the function I have a list of values between 0.0 and 1.0. Should I be doing something more?
Nov
30
comment How to perform rank based selection in a genetic algorithm?
The part that confuses me is this. If I do rank based selection, I will be ranking the entire population. From that, I want to pick out a subset to serve as parents just like I do with the other algorithms I have implemented thus far. But I'm not sure how to select that subset after the ranking is done. With rank selection I just remove the relative fitness weights, but I don't see how this selects a subset of the population like for example roulette wheel or stochastic universal sampling does. Is the little code snippet above correct, by the way?
Nov
29
comment How to perform rank based selection in a genetic algorithm?
I am sorry about the insane formatting. I'm not sure how to fix it.