Weighting Classes in a Binary Classification Neural Network
1 次查看(过去 30 天)
显示 更早的评论
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 个评论
Eugene Alexander
2019-5-28
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.
回答(0 个)
另请参阅
类别
在 Help Center 和 File Exchange 中查找有关 Pattern Recognition and Classification 的更多信息
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!