Main Content
Function Approximation and Clustering
Perform regression, classification, and clustering using shallow neural networks
Generalize nonlinear relationships between example inputs and outputs, perform unsupervised learning with clustering and autoencoders.
Categories
- Function Approximation and Nonlinear Regression
Create a neural network to generalize nonlinear relationships between example inputs and outputs
- Pattern Recognition
Train a neural network to generalize from example inputs and their classes, train autoencoders
- Clustering
Discover natural distributions, categories, and category relationships
- Autoencoders
Perform unsupervised learning of features using autoencoder neural networks
- Define Shallow Neural Network Architectures
Define shallow neural network architectures and algorithms