SphereNet - Implementation for <Deep Hyperspherical Learning> in NIPS'17.

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SphereNet is released under the MIT License (refer to the LICENSE file for details). The repository contains an example Tensorflow implementation for SphereNets. SphereNets are introduced in the NIPS 2017 paper "Deep Hyperspherical Learning" (arXiv). SphereNets are able to converge faster and more stably than its CNN counterparts, while yielding to comparable or even better classification accuracy.

https://github.com/wy1iu/SphereNet

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