Network in Network

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Key Problems

  • CNN implicitly makes the assumption that the latent concepts are linearly separable
  • the data for the same concept often live on a nonlinear manifold, therefore the representations that capture these concepts are generally highly nonlinear function of the input

Contributions

  • enhance model discriminability for local patches within the receptive field
  • utilize global average pooling over feature maps in the classification layer, which is easier to interpret and less prone to overfitting

Methods

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Linear convolution layer

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MLP Convolution Layers

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Architecture

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Global Average Pooling

  • This structure bridges the convolutional structure with traditional neural network classifiers.
  • It treats the convolutional layers as feature extractors, and the resulting feature is classified in a traditional way.
  • t has improved the generalization ability and largely prevents overfitting

Experiments

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