필터 지우기
필터 지우기

Stop mutation in GAMULTIOBj

조회 수: 2 (최근 30일)
Dilini
Dilini 2014년 12월 21일
답변: Zhangxi Feng 2018년 6월 19일
Hi, I tried this simple problem with an initial population. I want to find the best set of combinations of these variables without altering their values. This I'm trying to get by having only crossover children. As I understand from the documentation this can be done by setting crossoverfraction to 1. But I don't get the expected result.
e.g.
P_s=randi(20,3,9);
numberOfVariables=9;
FitFunc = @multiobjectiveFit;
options = gaoptimset('CrossoverFraction',1,'InitialPopulation',P_s,'CrossoverFcn',@crossovertwopoint)
[x,fval,exitflag]=gamultiobj(FitFunc,numberOfVariables,[],[],[],[],[],[],options);
function y=multiobjectiveFit(x)
y = zeros(2,1);
y(1) =-sum(x);
y(2) =var(x);
gives me a new set of populations x with non-integer values whereas I started with integer values. Please help me. (FYI: My original problem has a very large initial population with non-integer values)
  댓글 수: 1
Dilini
Dilini 2014년 12월 21일
May be I mis-interpreted the document. In crossover it doesn't simply swap the elements it combines them whereas in mutation it alters the value, isn't it? May be I should write my own crossover function?

댓글을 달려면 로그인하십시오.

답변 (1개)

Zhangxi Feng
Zhangxi Feng 2018년 6월 19일
Sad no one answers this question. I am trying to understand the whole process more also. I believe making your own creation, selection, crossover, and mutation functions are definitely the way to go if you have a specific need.

카테고리

Help CenterFile Exchange에서 MATLAB에 대해 자세히 알아보기

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by