Genetic Algorithm is so sharp and powerful and almost be able to solve all kind of optimum problem.GA is a such powerful tool, you don't need OR any more. Just kidding.
Which means You can solve all the optimum problems without any money if you have SAS University Edition.Code is written in IML.
It is so amazing . I love it so much.
About problem :
https://communities.sas.com/message/256779#256779
data have;
input Player Position $ Points Price ;
cards;
1 G 2 8000
2 D 4 7000
3 M 6 12000
4 A 8 10000
5 G 4 9000
6 A 9 14000
8 D 4 8000
9 M 6 4000
10 A 8 10000
12 A 9 14000
13 D 4 7000
14 M 6 12000
17 A 9 14000
18 G 2 8000
19 D 4 7000
20 M 6 12000
24 D 4 7000
25 M 6 12000
29 D 4 7000
30 M 6 7000
32 M 6 1000
36 D 4 7000
37 M 6 12000
42 D 4 7000
43 M 6 12000
45 G 4 9000
46 A 9 14000
47 D 4 7000
48 M 6 12000
55 D 4 7000
56 M 6 12000
60 D 4 6000
61 M 6 9000
63 M 6 2000
67 D 4 5000
68 M 6 9000
70 M 8 6000
;
run;
%macro createData(n=2);
data have(drop=i rename=(count=player));
set have(drop=player);
do i = 1 to &n;
count+1;
output;
end;
run;
%mend createData;
%createData()
options fullstimer;
proc sort data=have;by Position Points ;run;
proc sql noprint;
select count(*) into : A from have where Position='A';
select count(*) into : D from have where Position='D';
select count(*) into : G from have where Position='G';
select count(*) into : M from have where Position='M';
quit;
proc iml;
use have;
read all var _all_ where(Position='A');
Player_A=Player;Point_A=Points;Pice_A=Price;
read all var _all_ where(Position='D');
Player_D=Player;Point_D=Points;Pice_D=Price;
read all var _all_ where(Position='G');
Player_G=Player;Point_G=Points;Pice_G=Price;
read all var _all_ where(Position='M');
Player_M=Player;Point_M=Points;Pice_M=Price;
close have;
start football(x) global(Point_A,Pice_A,Point_D,Pice_D,Point_G,Pice_G,Point_M,Pice_M);
points=sum(Point_A[x[1:2]],Point_D[x[3:6]],Point_G[x[7]],Point_M[x[8:11]]);
sum_cost=sum(Pice_A[x[1:2]],Pice_D[x[3:6]],Pice_G[x[7]],Pice_M[x[8:11]]);
if sum_cost>75000 | ncol(unique(x[8:11]))^=4 | ncol(unique(x[3:6]))^=4 | ncol(unique(x[1:2]))^=2 then points=1;
return (points);
finish;
id=gasetup(2,11,123);
call gasetobj(id,1,"football");
call gasetcro(id,1.0,2);
call gasetmut(id,0.2,2,1);
call gasetsel(id,100,1,0.95);
call gainit(id,10000,{1 1 1 1 1 1 1 1 1 1 1 ,
&A &A &D &D &D &D &G &M &M &M &M });
niter = 100;
summary = j(niter,2);
mattrib summary [c = {"Max Points", "Avg Points"} l=""];
do i = 1 to niter;
call garegen(id);
call gagetval(value, id);
summary[i,1] = value[1];
summary[i,2] = value[:];
end;
call gagetmem(mem, value, id, 1);
Players=Player_A[mem[1:2]]//Player_D[mem[3:6]]//Player_G[mem[7]]//Player_M[mem[8:11]];
sum_cost=sum(Pice_A[mem[1:2]],Pice_D[mem[3:6]],Pice_G[mem[7]],Pice_M[mem[8:11]]);
print Players[ l="best member:"],
"Max Points: " value[l = ""],
"Total Cost: " sum_cost[l = ""] ;
iteration = t(1:niter);
print iteration summary;
call gaend(id);
quit;
Xia Keshan
Does this mean you can write the optimal march madness bracket?
Yeah. I bet it was . If you read the IML documentation about GA . You would be shocked by it . It almost can solve all the optimize problem .But you need to know how to make it fast convergence . There are so many parameters you need to set up . Once you master GA , you maybe not need OR any more . I don't know what Mr. Newton would get to say , if he was still live today .
Nice @Ksharp
But why Do yo duplicate the data when doing:
%macro createData(n=2);
data have(drop=i rename=(count=player));
set have(drop=player);
do i = 1 to &n;
count+1;
output;
end;
run;
%mend createData;
If I change into (n=1) it's still working. I don't the the need for it but probably I'm missing out something.
Best regards, Arne
Yeah. That is just creating a sample data. any value of n is validate .
Thanks for the information!
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Thanks your faith on me.
But GA is unable to guarantee you get GLOBAL optimal solution.For such kind of integer programming, you 'd better use PROC OPTMODEL within SAS/OR to get the exact right solution.
And the advantage of GA is it can almost solve any kind of optimal problem which make me astounding .
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