How to compare matrices with different dimensions?

2 Ansichten (letzte 30 Tage)
phdcomputer Eng
phdcomputer Eng am 22 Jun. 2019
Kommentiert: Guillaume am 24 Jun. 2019
I wrote a code for classification by using 5 classifiers and at the end I used voting this code is for initia defining of train and test data:
clear all
close all
clc
load liver.mat;
data=Liver;
[n,m]=size(data);
rows=(1:n);
test_count=floor((1/6)*n);
sum_ens=0;sum_result=0;
test_rows=randsample(rows,test_count);
train_rows=setdiff(rows,test_rows);
test=data(test_rows,:);
train=data(train_rows,:);
xtest=test(:,1:m-1);
ytest=test(:,m);
xtrain=train(:,1:m-1);
ytrain=train(:,m);
I put the resault of each classifier in out 1-5 and then aggregate them in output and compared output with test labels :
out1 = majorityvote(tt(1,:));
out2 = majorityvote(tt(2,:));
out3 = majorityvote(tt(3,:));
out4 = majorityvote(tt(4,:) );
out5 = majorityvote(tt(5,:) );
output=[out1,out2,out3,out4,out5];
for i=1:test_count
if(output(i)==1 && ytest(i)==1)
tp_ens=tp_ens+1;
end
if(output(i)==0 && ytest(i)==0)
tn_ens=tn_ens+1;
end
if(output(i)==0 && ytest(i)==1)
fp_ens=fp_ens+1;
end
if(output(i)==1 && ytest(i)==0)
fn_ens=fn_ens+1;
end
end
this codes doesn't have any problems with other datasets in this part but for the liver data (attached) It shows this error:
Index exceeds matrix dimensions.
Error in pimaclassify_new (line 174)
if(output(i)==1 && ytest(i)==1)
Maybe because the number of test_count for specified number of rows of data were obtained 5 so comparing them with test labels was true but for liver data which have different number of rows , this comparing shows error.
Should I change the sizes of outputs of classifiers or the size of test data or test_count?
I'll be grateful to have your opinions about fixing the error.
Thanks
  6 Kommentare
Bob Thompson
Bob Thompson am 24 Jun. 2019
You bring up a good point about the size of the output of majorityvote, I should not have assumed it was a single element. With that said though, why would the result be a single column vector, when the input is a single row vector. It would make sense with the original concatenation of output, but it seems like a confusing way to write the function. Also, do we know that majorityvote(tt) will automatically consider the rows individually, or will it simple take the entire array as a single large input?
Guillaume
Guillaume am 24 Jun. 2019
If majorityvote is a vector, since tt(row, :) is a vector (column or row doesn't matter), then majorityvote(tt(row, :)) will be the same shape as majorityvote. A(B) is the shape of A when both A and B are vectors
If majorityvote is not a vector, then majorityvote(tt(row, :)) will be the same shape as tt(row, :) hence a column vector. A(B) is the shape of B when either A or B is not a vector.
An annoying or useful inconsistency depending on your point of view.
A corollary of the above is that output = majorityvote(tt) will be the same size as tt, with output(r, c) equal to majorityvote(tt(r, c))

Melden Sie sich an, um zu kommentieren.

Antworten (0)

Kategorien

Mehr zu Parallel for-Loops (parfor) finden Sie in Help Center und File Exchange

Community Treasure Hunt

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

Start Hunting!

Translated by