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Design of a 2-Bit Neural Network Quantizer for Laplacian Source.

Zoran PerićMilan SavićNikola SimićBojan DenićVladimir Despotović
Published in: Entropy (Basel, Switzerland) (2021)
Achieving real-time inference is one of the major issues in contemporary neural network applications, as complex algorithms are frequently being deployed to mobile devices that have constrained storage and computing power. Moving from a full-precision neural network model to a lower representation by applying quantization techniques is a popular approach to facilitate this issue. Here, we analyze in detail and design a 2-bit uniform quantization model for Laplacian source due to its significance in terms of implementation simplicity, which further leads to a shorter processing time and faster inference. The results show that it is possible to achieve high classification accuracy (more than 96% in the case of MLP and more than 98% in the case of CNN) by implementing the proposed model, which is competitive to the performance of the other quantization solutions with almost optimal precision.
Keyphrases
  • neural network
  • machine learning
  • deep learning
  • healthcare
  • single cell
  • primary care
  • quality improvement
  • convolutional neural network