LGSep 27, 2016

HyperNetworks

arXiv:1609.09106v41924 citations
Originality Highly original
AI Analysis

This challenges the weight-sharing paradigm for recurrent networks, potentially benefiting researchers and practitioners in sequence modeling and image recognition.

The authors tackled the problem of generating non-shared weights for deep networks by introducing hypernetworks, which use one network to generate weights for another, achieving near state-of-the-art results on sequence modeling tasks like character-level language modeling and neural machine translation while requiring fewer parameters for convolutional networks.

This work explores hypernetworks: an approach of using a one network, also known as a hypernetwork, to generate the weights for another network. Hypernetworks provide an abstraction that is similar to what is found in nature: the relationship between a genotype - the hypernetwork - and a phenotype - the main network. Though they are also reminiscent of HyperNEAT in evolution, our hypernetworks are trained end-to-end with backpropagation and thus are usually faster. The focus of this work is to make hypernetworks useful for deep convolutional networks and long recurrent networks, where hypernetworks can be viewed as relaxed form of weight-sharing across layers. Our main result is that hypernetworks can generate non-shared weights for LSTM and achieve near state-of-the-art results on a variety of sequence modelling tasks including character-level language modelling, handwriting generation and neural machine translation, challenging the weight-sharing paradigm for recurrent networks. Our results also show that hypernetworks applied to convolutional networks still achieve respectable results for image recognition tasks compared to state-of-the-art baseline models while requiring fewer learnable parameters.

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