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Poster

Weight Agnostic Neural Networks

Adam Gaier · David Ha

East Exhibition Hall B + C #149

Keywords: [ Connectomics; Neuroscience and Cog ] [ Deep Learning -> Biologically Plausible Deep Networks; Neuroscience and Cognitive Science ] [ Neuroscience and cognitive science ]


Abstract:

Not all neural network architectures are created equal, some perform much better than others for certain tasks. But how important are the weight parameters of a neural network compared to its architecture? In this work, we question to what extent neural network architectures alone, without learning any weight parameters, can encode solutions for a given task. We propose a search method for neural network architectures that can already perform a task without any explicit weight training. To evaluate these networks, we populate the connections with a single shared weight parameter sampled from a uniform random distribution, and measure the expected performance. We demonstrate that our method can find minimal neural network architectures that can perform several reinforcement learning tasks without weight training. On a supervised learning domain, we find network architectures that achieve much higher than chance accuracy on MNIST using random weights.

Interactive version of this paper at https://weightagnostic.github.io/

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