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Module: tfl.lattice_layer

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Lattice layer with monotonicity, unimodality, trust and bound constraints.

Keras implementation of tensorflow lattice layer. This layer takes one or more d-dimensional input(s) and combines them using a lattice function, satisfying monotonicity, unimodality, trust and bound constraints if specified.

Classes

class LaplacianRegularizer: Laplacian regularizer for tfl.layers.Lattice layer.

class LatticeConstraints: Constraints for tfl.layers.Lattice layer.

class LinearInitializer: Initializes a tfl.layers.Lattice as linear function.

class RandomMonotonicInitializer: Initializes a tfl.layers.Lattice as uniform random monotonic function.

class TorsionRegularizer: Torsion regularizer for tfl.layers.Lattice layer.

Functions

create_kernel_initializer(...): Returns a kernel Keras initializer object from its id.

LATTICE_KERNEL_NAME 'lattice_kernel'
LATTICE_SIZES_NAME 'lattice_sizes'
absolute_import Instance of __future__._Feature
division Instance of __future__._Feature
print_function Instance of __future__._Feature