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Analysis of quantization effects on high-order function neural networks

机译:对高阶函数神经网络的量化影响分析

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摘要

In this paper we investigate the combined effects of quantization and clipping on high-order function neural networks (HOFNN). Statistical models are used to analyze the effects of quantization in a digital implementation. We analyze the performance degradation caused as a function of the number of fixed-point and floating-point quantization bits under the assumption of different probability distributions for the quantized variables, and then compare the training performance between situations with and without weight clipping. We establish and analyze the relationships for a true nonlinear neuron between inputs and outputs bit resolution, training and quantization methods, network order and performance degradation, all based on statistical models, and for on-chip and off-chip training. Our experimental simulation results verify the presented theoretical analysis.
机译:在本文中,我们研究了量化和限幅对高阶函数神经网络(HOFNN)的组合影响。统计模型用于分析数字实现中量化的影响。我们在假设量化变量具有不同概率分布的情况下,分析了由于定点和浮点量化位数的数量而导致的性能下降,然后比较了在有和没有权重裁剪的情况下的训练性能。我们建立和分析输入和输出位分辨率,训练和量化方法,网络顺序和性能下降之间的真正非线性神经元之间的关系,所有这些都基于统计模型,以及片上和片外训练。我们的实验仿真结果验证了所提出的理论分析。

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