Max norm constraint
This card is a wrapper of this Keras class.

Note: the backend for building and training neural networks is based on Keras. The documentation of this card is a variant of the documentation of its corresponding class.
Inputs
-
Max value — Float
The maximum norm value for the incoming weights.
-
Axes — List of Integer
Axis along which to calculate weight norms. For instance, in a Dense layer the weight matrix has shape (
input_dim,output_dim), set Axes to “0” to constrain each weight vector of length (input_dim,). In a Convolution 2D layer with Data format = “Channels last”, the weight tensor has shape (rows,cols,input_depth,output_depth), set Axes to “0, 1, 2” to constrain the weights of each filter tensor of size (rows,cols,input_depth).
Outputs
-
Constraint instance — NeuralNetworkConstraint
Instance of the constraint.