Approach
- Fixed-point Factorization
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- Full-precision Weights Recovery
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The quantized weights are used to conduct forward and backward computation and the full precision weights are used to accumulate gradients during back-propagation.
Experiment
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References:
Fixed-point Factorized Networks, Peisong Wang, 2017, CVPR
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