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  • Deep vs. Shallow Neural Networks

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Relation

Why deep networks instead of shallower networks?

Because deeper networks can learn more complicated functions. Exponentially more nodes would be needed in each layer to achieve the same level of complexity if the network was shallower.

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Updated 2020-11-02

Contributors are:

Iman YeckehZaare
Iman YeckehZaare
🏆 4
Yue Kuang
Yue Kuang
✔️ 1
Daniel Munoz Huerta
Daniel Munoz Huerta
✔️ 1

Who are from:

University of Michigan - Ann Arbor
University of Michigan - Ann Arbor
🏆 5
University of Rochester
University of Rochester
✔️ 1

Tags

Data Science

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Learn After
  • Why deep representations?

  • An example of latent representations in deep networks

  • Depth and Width for Neural Networks

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  • Example of how deeper layers of a neural network can learn more complicated functions

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