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arxiv 1611.06539 v1 pith:YF6ZSA43 submitted 2016-11-20 cs.NE cs.LG

Efficient Stochastic Inference of Bitwise Deep Neural Networks

classification cs.NE cs.LG
keywords bitwisenetworksneuralefficientinferenceperformancecifar-10classification
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently published methods enable training of bitwise neural networks which allow reduced representation of down to a single bit per weight. We present a method that exploits ensemble decisions based on multiple stochastically sampled network models to increase performance figures of bitwise neural networks in terms of classification accuracy at inference. Our experiments with the CIFAR-10 and GTSRB datasets show that the performance of such network ensembles surpasses the performance of the high-precision base model. With this technique we achieve 5.81% best classification error on CIFAR-10 test set using bitwise networks. Concerning inference on embedded systems we evaluate these bitwise networks using a hardware efficient stochastic rounding procedure. Our work contributes to efficient embedded bitwise neural networks.

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