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Collaborating Authors

 Iraj Saniee


Efficient Deep Approximation of GMMs

Neural Information Processing Systems

The universal approximation theorem states that any regular function can be approximated closely using a single hidden layer neural network. Some recent work has shown that, for some special functions, the number of nodes in such an approximation could be exponentially reduced with multi-layer neural networks.


Efficient Deep Approximation of GMMs

Neural Information Processing Systems

The universal approximation theorem states that any regular function can be approximated closely using a single hidden layer neural network. Some recent work has shown that, for some special functions, the number of nodes in such an approximation could be exponentially reduced with multi-layer neural networks.