Weighting Classes in a Binary Classification Neural Network

1 view (last 30 days)
I am building a binary classification neural network. The last 3 layers of my CNN architecture are the following:
fullyConnectedLayer(2, 'Name', 'fc1');
softmaxLayer
classificationLayer
Currently, the classificationLayer uses a crossentropyex loss function, but this loss function weights the binary classes (0, 1) the same. Unfortunately, in my total data is have substantially less information about the 0 class than about the 1 class.
As a result, I want to weight the loss function to penalize misclassifying the 0 class more, with classWeights proportional to 1/(class frequency).
I noted that there is a way to weight classes in the pixelClassificationLayer but not the general classificationLayer, which I would be using as I am working on a classification problem.
How can I add class weights to my loss function for training?
  3 Comments
Arjun Desai
Arjun Desai on 24 Mar 2019
Hi Samreen,
Unfortunately i could not find a good work around. might be something to pitch for future development.
Arjun
Eugene Alexander
Eugene Alexander on 28 May 2019
Please take a look at Define Custom Weighted Classification Layer and the example on Speech Command Recognition using Deep Learning. I am trying it right now on a binary classification problem.

Sign in to comment.

Answers (0)

Products


Release

R2018a

Community Treasure Hunt

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

Start Hunting!