拉普拉斯源2位双模均匀标量量化器的性能分析

IF 2 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS Information Technology and Control Pub Date : 2022-12-12 DOI:10.5755/j01.itc.51.4.30473
Z. Perić, B. Denic, A. Jovanovic, S. Milosavljevic, Milan S. Savic
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引用次数: 0

摘要

处理非自适应标量量化器时的主要问题是它们对方差不匹配的敏感性,当数据方差与用于量化器设计的方差不同时,就会发生这种影响。本文考虑了低速率(2位)均匀标量量化(USQ)中该效应的影响,并提出了适当的抑制措施。特别是,我们提出的方法代表了先前用于提高单个量化器性能的方法的升级版本。它基于双模式量化,结合了两个2位usq(具有适当选择的参数)来处理通过应用特殊规则选择的输入数据。理论分析表明,该方法对方差失配的敏感性较低,使得双模USQ比单模USQ在鲁棒性方面更有效。此外,与其他2位量化器解决方案相比,实现了增益。本文还对多层感知器(MLP)神经网络的权重量化给出了实验结果,实验结果与理论结果吻合良好。由于这些成果,我们相信我们提出的解决方案可以成为一个很好的选择,用于压缩由拉普拉斯分布建模的非平稳数据,如神经网络参数。
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Performance Analysis of a 2-bit Dual-Mode Uniform Scalar Quantizer for Laplacian Source
The main issue when dealing with the non-adaptive scalar quantizers is their sensitivity to variance-mismatch, the effect that occurs when the data variance differs from the one used for the quantizer design. In this paper, we consider the influence of that effect in low-rate (2-bit) uniform scalar quantization (USQ) of Laplacian source and also we propose adequate measure to suppress it. Particularly, the approach we propose represents the upgraded version of the previous approaches used to improve performance of the single quantizer. It is based on dual-mode quantization that combines two 2-bit USQs (with adequately chosen parameters) to process input data, selected by applying the special rule. Analysis conducted in theoretical domain has shown that the proposed approach is less sensitive to variance-mismatch, making the dual-mode USQ more efficient in terms of robustness than the single USQ. Also, a gain is achieved compared to other 2-bit quantizer solutions. Experimental results are also provided for quantization of weights of the multi-layer perceptron (MLP) neural network, where good matching with the theoretical results is observed. Due to these achievements, we believe that the solution we propose can be a good choice for compression of non-stationary data modeled by Laplacian distribution, such as neural network parameters.
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来源期刊
Information Technology and Control
Information Technology and Control 工程技术-计算机:人工智能
CiteScore
2.70
自引率
9.10%
发文量
36
审稿时长
12 months
期刊介绍: Periodical journal covers a wide field of computer science and control systems related problems including: -Software and hardware engineering; -Management systems engineering; -Information systems and databases; -Embedded systems; -Physical systems modelling and application; -Computer networks and cloud computing; -Data visualization; -Human-computer interface; -Computer graphics, visual analytics, and multimedia systems.
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