Manifold Tangent Classifier
Eliminates the need to know the tangent vectors a priori. Uses autoencoders to estimate manifold tangent vectors to avoid needing user-specified tangent vectors, which go beyond the classical invariants from the geometry of images and include factors that must be learned because they are object-specific. The algorithm first uses an autoencoder to learn the manifold structure by unsupervised learning, then uses the tangents to regularize a neural net classifier, similar to tangent propagation.
0
1
Tags
Data Science
Related
Data Augmentation in Deep Learning
Early Stopping in Deep Learning
Dropout Regularization in Deep Learning
Which of these techniques are useful for reducing variance (reducing overfitting)?
ElasticNet Regression
If your Neural Network model seems to have high variance, what of the following would be promising things to try?
Regularization in ML and DL
Bagging in Deep Learning
Dropout in Deep Learning
Normalization of Data
Tangent Distance Algorithm
Tangent Propagation Algorithm
Manifold Tangent Classifier
Boosting in Deep Learning
Appropriate Regularization/ Representation
Weight Decay
L1 Regularization