Publication | Closed Access
Variational Network Quantization
51
Citations
19
References
2018
Year
Geometric LearningEngineeringMachine LearningData ScienceVariational AnalysisPattern RecognitionSparse Neural NetworkVariational Network QuantizationAutoencodersTernary QuantizationComputer ScienceDeep LearningNeural Architecture SearchQuantization (Signal Processing)Model CompressionSparse Posterior Distribution
In this paper, the preparation of a neural network for pruning and few-bit quantization is formulated as a variational inference problem. To this end a quantizing prior that leads to a multi-modal, sparse posterior distribution over weights is introduced and a differentiable Kullback-Leibler divergence approximation for this prior is derived. After training with Variational Network Quantization, weights can be replaced by deterministic quantization values with small to negligible loss of task accuracy (including pruning by setting weights to 0). The method does not require fine-tuning after quantization. Results are shown for ternary quantization on LeNet-5 (MNIST) and DenseNet-121 (CIFAR-10).
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