Trining a neural network with leave one out crossval method
6 views (last 30 days)
Show older comments
Hello there,
I am new at neural networks and matlab. I am tring to train a network but i have less data available with me, so I am trying with leave-one-out method. But i am unable to find a way. Is there any direct method of training with leave-one-out training in matlab environment or what way should i follow. Thank you.
0 Comments
Answers (1)
Jalaj Gambhir
on 25 Feb 2020
Hi,
'Leave-one-out' is a cross validation method. You can generate cross validation indices for train and test set using cvpartition, specifying 'LeaveOut' parameter. This would generate partitions of n-1 training samples and 1 test sample.
>> load fisheriris;
>> x = meas;
>> y = species;
>> c = cvpartition(y,'LeaveOut')
This generates
c =
Leave-one-out cross validation partition
NumObservations: 150
NumTestSets: 150
TrainSize: 149 149 149 149 149 149 149 149 149 149 ...
TestSize: 1 1 1 1 1 1 1 1 1 1 ...
For each partition 'i', you can generate train and test samples as:
>> x_train = x(training(c,i),:);
>> y_train = y(training(c,i),:); % You might want to convert this to one-hot-encoded vectors
>> x_test = x(test(c,i),:);
>> y_test = y(test(c,2),:); % You might want to convert this to one-hot-encoded vectors
Then you can use this train and test data to train a neural network using tools like nnstart which are perfect for beginners. Look at an example here.
1 Comment
Juan Manuel Miguel
on 6 Aug 2020
Thank you Jalaj, it was very useful for me. I think you meant y_test = y(test(c,i),:); instead of y_test = y(test(c,2),:); didn't you?
Thank you
See Also
Categories
Find more on Deep Learning Toolbox in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!