# Data augmentation techniques for general datasets?

I am working in a machine learning problem and want to build neural network based classifiers on it in matlab. One problem is that the data is given in the form of features and number of samples is considerably lower. I know about data augmentation techniques for images, by rotating, translating, affine translation, etc.

I would like to know whether there are data augmentation techniques available for general datasets ? Like is it possible to use randomness to generate more data ? I read the answer here but I did not understand it.

Any help will be appreciated.

You need to look into autoencoders. Effectively you pass your data into a low level neural network, it applies a PCA-like analysis, and you can subsequently use it to generate more data.

Matlab has an autoencoder class as well as a function, that will do all of this for you. From the matlab help files

Generate the training data.

``````rng(0,'twister'); % For reproducibility
n = 1000;
r = linspace(-10,10,n)';
x = 1 + r*5e-2 + sin(r)./r + 0.2*randn(n,1);
``````

Train autoencoder using the training data.

``````hiddenSize = 25;
autoenc = trainAutoencoder(x',hiddenSize,...
'EncoderTransferFunction','satlin',...
'DecoderTransferFunction','purelin',...
'L2WeightRegularization',0.01,...
'SparsityRegularization',4,...
'SparsityProportion',0.10);
``````

Generate the test data.

``````n = 1000;
r = sort(-10 + 20*rand(n,1));
xtest = 1 + r*5e-2 + sin(r)./r + 0.4*randn(n,1);
``````

Predict the test data using the trained autoencoder, autoenc .

``````xReconstructed = predict(autoenc,xtest');
``````

Plot the actual test data and the predictions.

``````figure;
plot(xtest,'r.');
hold on
plot(xReconstructed,'go');
``````

You can see the green cicrles which represent additional data generated with the auto-encoder.

• I read the article. One query , auto-encoders are unsupervised. I however have access to labels during the training stage. Suppose I have 5 classes. Do I need to train 5 separate auto-encoders to generate examples for the five different classes or will one suffice ? Kindly please reply.
– roni
Commented Sep 2, 2016 at 5:44
• Also how good will be the reconstruction if we use only one single layer for auto-encoders ? Kindly check this in.mathworks.com/help/nnet/ref/autoencoder.predict.html The reconstructed images are pretty poor - which begs the question that if we had used more number of layers, the reconstruction should be better.
– roni
Commented Sep 2, 2016 at 8:56
• Any examples in Python? Commented Jun 6, 2021 at 4:03
• @KathiravanNatarajan Tons of examples in Python...... look up the ae (autoencoder) package in sklearn Commented Jun 7, 2021 at 14:51