Sign Up

Sign Up to our social questions and Answers Engine to ask questions, answer people’s questions, and connect with other people.

Have an account? Sign In

Have an account? Sign In Now

Sign In

Login to our social questions & Answers Engine to ask questions answer people’s questions & connect with other people.

Sign Up Here

Forgot Password?

Don't have account, Sign Up Here

Forgot Password

Lost your password? Please enter your email address. You will receive a link and will create a new password via email.

Have an account? Sign In Now

You must login to ask a question.

Forgot Password?

Need An Account, Sign Up Here

Please briefly explain why you feel this question should be reported.

Please briefly explain why you feel this answer should be reported.

Please briefly explain why you feel this user should be reported.

Sign InSign Up

The Archive Base

The Archive Base Logo The Archive Base Logo

The Archive Base Navigation

  • SEARCH
  • Home
  • About Us
  • Blog
  • Contact Us
Search
Ask A Question

Mobile menu

Close
Ask a Question
  • Home
  • Add group
  • Groups page
  • Feed
  • User Profile
  • Communities
  • Questions
    • New Questions
    • Trending Questions
    • Must read Questions
    • Hot Questions
  • Polls
  • Tags
  • Badges
  • Buy Points
  • Users
  • Help
  • Buy Theme
  • SEARCH
Home/ Questions/Q 7445001
In Process

The Archive Base Latest Questions

Editorial Team
  • 0
Editorial Team
Asked: May 29, 20262026-05-29T11:42:54+00:00 2026-05-29T11:42:54+00:00

We know that Genetic Algorithms (or evolutionary computation) work with an encoding of the

  • 0

We know that Genetic Algorithms (or evolutionary computation) work with an encoding of the points in our solution space Ω rather than these points directly. In the literature, we often find that GAs have the drawback : (1) since many chromosomes are coded into a similar point of Ω or similar chromosomes have very different points, the efficiency is quite low. Do you think that is really a drawback ? because these kind of algorithms uses the mutation operator in each iteration to diversify the candidate solutions. To add more diversivication we simply increase the probability of crossover. And we mustn’t forget that our initial population ( of chromosones ) is randomly generated ( another more diversification). The question is, if you think that (1) is a drawback of GAs, can you provide more details ? Thank you.

  • 1 1 Answer
  • 0 Views
  • 0 Followers
  • 0
Share
  • Facebook
  • Report

Leave an answer
Cancel reply

You must login to add an answer.

Forgot Password?

Need An Account, Sign Up Here

1 Answer

  • Voted
  • Oldest
  • Recent
  • Random
  1. Editorial Team
    Editorial Team
    2026-05-29T11:42:55+00:00Added an answer on May 29, 2026 at 11:42 am

    Mutation and random initialization are not enough to combat the problem that is known as genetic drift which is the major problem of genetic algorithms. Genetic drift means that the GA may quickly lose most of its genetic diversity and the search proceeds in a way that is not beneficial for crossover. This is because the random initial population quickly converges. Mutation is a different thing, if it is high it will diversify, true, but at the same time it will prevent convergence and the solutions will remain at a certain distance to the optimum with higher probability. You will need to adapt the mutation probability (not the crossover probability) during the search. In a similar manner the Evolution Strategy, which is similar to a GA, adapts the mutation strength during the search.

    We have developed a variant of the GA that is called OffspringSelection GA (OSGA) which introduces another selection step after crossover. Only those children will be accepted that surpass their parents’ fitness (the better, the worse or any linearly interpolated value). This way you can even use random parent selection and put the bias on the quality of the offspring. It has been shown that this slows the genetic drift. The algorithm is implemented in our framework HeuristicLab. It features a GUI so you can download and try it on some problems.

    Other techniques that combat genetic drift are niching and crowding which let the diversity flow into the selection and thus introduce another, but likely different bias.

    EDIT: I want to add that the situation of having multiple solutions with equal quality might of course pose a problem as it creates neutral areas in the search space. However, I think you didn’t really mean that. The primary problem is genetic drift, ie. the loss of (important) genetic information.

    • 0
    • Reply
    • Share
      Share
      • Share on Facebook
      • Share on Twitter
      • Share on LinkedIn
      • Share on WhatsApp
      • Report

Sidebar

Related Questions

I have made a quite few genetic algorithms; they work (they find a reasonable
Do you know a JavaScript library that implements a generic Iterator class for collections
I know that I can do something like $int = (int)99; //(int) has a
I know that default cron's behavior is to send normal and error output to
I know that you can insert multiple rows at once, is there a way
I know that |DataDirectory| will resolve to App_Data in an ASP.NET application but is
I know that the MsNLB can be configured to user mulitcast with IGMP. However,
I know that .NET is JIT compiled to the architecture you are running on
I know that the following is true int i = 17; //binary 10001 int
I know that just using rand() is predictable, if you know what you're doing,

Explore

  • Home
  • Add group
  • Groups page
  • Communities
  • Questions
    • New Questions
    • Trending Questions
    • Must read Questions
    • Hot Questions
  • Polls
  • Tags
  • Badges
  • Users
  • Help
  • SEARCH

Footer

© 2021 The Archive Base. All Rights Reserved
With Love by The Archive Base

Insert/edit link

Enter the destination URL

Or link to existing content

    No search term specified. Showing recent items. Search or use up and down arrow keys to select an item.