Whether the Support Region of Three-Bit Uniform Quantizer Has a Strong Impact on Post-Training Quantization for MNIST Dataset?

Author:

Nikolić JelenaORCID,Perić Zoran,Aleksić DanijelaORCID,Tomić Stefan,Jovanović Aleksandra

Abstract

Driven by the need for the compression of weights in neural networks (NNs), which is especially beneficial for edge devices with a constrained resource, and by the need to utilize the simplest possible quantization model, in this paper, we study the performance of three-bit post-training uniform quantization. The goal is to put various choices of the key parameter of the quantizer in question (support region threshold) in one place and provide a detailed overview of this choice’s impact on the performance of post-training quantization for the MNIST dataset. Specifically, we analyze whether it is possible to preserve the accuracy of the two NN models (MLP and CNN) to a great extent with the very simple three-bit uniform quantizer, regardless of the choice of the key parameter. Moreover, our goal is to answer the question of whether it is of the utmost importance in post-training three-bit uniform quantization, as it is in quantization, to determine the optimal support region threshold value of the quantizer to achieve some predefined accuracy of the quantized neural network (QNN). The results show that the choice of the support region threshold value of the three-bit uniform quantizer does not have such a strong impact on the accuracy of the QNNs, which is not the case with two-bit uniform post-training quantization, when applied in MLP for the same classification task. Accordingly, one can anticipate that due to this special property, the post-training quantization model in question can be greatly exploited.

Publisher

MDPI AG

Subject

General Physics and Astronomy

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. On the Rate Redundancy of Uniform Scalar Quantization and Golomb-Rice Coding;2023 16th International Conference on Advanced Technologies, Systems and Services in Telecommunications (TELSIKS);2023-10-25

2. Two Novel Non-Uniform Quantizers with Application in Post-Training Quantization;Mathematics;2022-09-21

3. Analysis of Neural Network Accuracy Degradation due to Uniform Weight Quantization of One or More Layers;2022 57th International Scientific Conference on Information, Communication and Energy Systems and Technologies (ICEST);2022-06-16

4. Performance of Post-Training Two-Bits Uniform and Layer-Wise Uniform Quantization for MNIST Dataset from the Perspective of Support Region Choice;Mathematical Problems in Engineering;2022-04-07

5. On Different Criteria for Optimizing the Two-bit Uniform Quantizer;2022 21st International Symposium INFOTEH-JAHORINA (INFOTEH);2022-03-16

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