how to divide a data set randomly into training and testing data set?
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Hello guys, I have a dataset of a matrix of size 399*6 type double and I want to divide it randomly into 2 subsets training and testing sets by using the cross-validation.
i have tried this code but did get what i want https://www.mathworks.com/help/stats/cvpartition-class.html
Could anyone help me to do that?
Expected outputs:
training_data: k*6 double
testing_data: l*6 double
Accepted Answer
KSSV
on 16 Apr 2018
Edited: KSSV
on 16 Apr 2018
Let A be your data of size 399*6. To divide data into training and testing with given percentage:
[m,n] = size(A) ;
P = 0.70 ;
idx = randperm(m) ;
Training = A(idx(1:round(P*m)),:) ;
Testing = A(idx(round(P*m)+1:end),:) ;
20 Comments
Abhijit Bhattacharjee
on 4 Mar 2023
If it hasn't been covered already, you can also use cvpartition to split the dataset. See THIS answer for more details.
More Answers (8)
Jeremy Breytenbach
on 24 May 2019
Edited: Jeremy Breytenbach
on 24 May 2019
Hi there.
If you have the Deep Learning toolbox, you can use the function dividerand: https://www.mathworks.com/help/deeplearning/ref/dividerand.html
[trainInd,valInd,testInd] = dividerand(Q,trainRatio,valRatio,testRatio) separates targets into three sets: training, validation, and testing.
ALDO
on 2 Feb 2020
you can use The helper function 'helperRandomSplit', It performs the random split. helperRandomSplit accepts the desired split percentage for the training data and Data. The helperRandomSplit function outputs two data sets along with a set of labels for each. Each row of trainData and testData is an signal. Each element of trainLabels and testLabels contains the class label for the corresponding row of the data matrices.
percent_train = 70;
[trainData,testData,trainLabels,testLabels] = ...
helperRandomSplit(percent_train,Data);
make sure to have the proper toolbox to use it.
1 Comment
sidra ashiq
on 23 Nov 2018
Training = A(idx(1:round(P*m)),:) ;
what is the A function??
2 Comments
Mohamed Marei
on 17 Dec 2018
A is the vector or array indexed by the elements inside the bracket. It is not a function.
Mehernaz Savai
on 26 May 2022
Edited: Mehernaz Savai
on 26 May 2022
You can partition data in a number of ways:
Let X be your input matrix. You can also use similar workflow for Tables.
% Partiion with 40% data as testing
hpartition = cvpartition(size(X,1),'Holdout',0.4);
% Extract indices for training and test
trainId = training(hpartition);
testId = test(hpartition);
% Use Indices to parition the matrix
trainData = X(trainId,:);
testData = X(testId,:);
% Partiion with 60:20:20 ratio for training,validation and testing
% respectively
[trainId,valId,testId] = dividerand(size(X,1),0.6,0.2,0.2);
% Use Indices to parition the matrix
trainData = X(trainId,:);
valData = X(valInd,:);
testData = X(testId,:);
0 Comments
Pramod Hullole
on 5 Mar 2019
hello sir,
iI'm new to the neuralnetworks..now i am working on my projects which is leaf disease detections using image processing. i am done with feature extraction and now not getting what is the next step..i know that i should apply nn and divide it in training and testing data set.. but in practically how to procced that's what i am not getting .please help me through this... please send steps..each steps in details. .
1 Comment
Savas Yaguzluk
on 8 Mar 2019
Dear Pramod,
Open a new topic and ask your question there. So, people can see your topic title and help you.
Hossein Amini
on 15 Jul 2019
Hi there, it worked for me but I have problem in rest of the code. In newrb doc, it has been witten how to write the code but the more tried that I did, I got error like below.
0 Comments
Hossein Amini
on 15 Jul 2019
[z,r] = size(X);
idx = randperm(z);
TrainX = (X(idx(1:round(Ptrain.*z)),:))';
TrainY = (Y(idx(1:round(Ptrain.*z)),:))';
TestX = (X(idx(round(Ptrain.*z)+1:end),:))';
TestY = (Y(idx(round(Ptrain.*z)+1:end),:))';
If I'm not mistaken, in newrb doc, the size of input data and output data should be same like (4x266 and 1x266), that's why I transposed that matrixes. But the error which I got is specifying zeros matrix. I don't know how to prepare that.
0 Comments
ranjana roy chowdhury
on 15 Jul 2019
the dataset is WS Dream dataset with 339*5825.The entries have values between 0 and 0.1,few entries are -1.I want to make 96% of this dataset 0 excluding the entries having -1 in dataset.
0 Comments
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