2021
DOI: 10.48550/arxiv.2107.05298
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HEMP: High-order Entropy Minimization for neural network comPression

Enzo Tartaglione,
Stéphane Lathuilière,
Attilio Fiandrotti
et al.

Abstract: We formulate the entropy of a quantized artificial neural network as a differentiable function that can be plugged as a regularization term into the cost function minimized by gradient descent. Our formulation scales efficiently beyond the first order and is agnostic of the quantization scheme. The network can then be trained to minimize the entropy of the quantized parameters, so that they can be optimally compressed via entropy coding. We experiment with our entropy formulation at quantizing and compressing … Show more

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