Shallow vs. Deep Sum-Product Networks
–Neural Information Processing Systems
We investigate the representational power of sum-product networks (computation networks analogous to neural networks, but whose individual units compute either products or weighted sums), through a theoretical analysis that compares deep (multiple hidden layers) vs. shallow (one hidden layer) architectures. We prove there exist families of functions that can be represented much more efficiently with a deep network than with a shallow one, i.e. with substantially fewer hidden units. Such results were not available until now, and contribute to motivate recent research involving learning of deep sum-product networks, and more generally motivate research in Deep Learning.
Neural Information Processing Systems
Mar-15-2024, 05:59:27 GMT
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- Health & Medicine > Therapeutic Area > Neurology (0.68)
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