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arxiv: 1804.10172 · v1 · pith:UVYNUJLNnew · submitted 2018-04-26 · 💻 cs.CV

Capsule networks for low-data transfer learning

classification 💻 cs.CV
keywords capsulenetworkslearningaccuracydigitexampleslow-datapropose
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We propose a capsule network-based architecture for generalizing learning to new data with few examples. Using both generative and non-generative capsule networks with intermediate routing, we are able to generalize to new information over 25 times faster than a similar convolutional neural network. We train the networks on the multiMNIST dataset lacking one digit. After the networks reach their maximum accuracy, we inject 1-100 examples of the missing digit into the training set, and measure the number of batches needed to return to a comparable level of accuracy. We then discuss the improvement in low-data transfer learning that capsule networks bring, and propose future directions for capsule research.

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