Understanding variance propagation in stochastic computing systems

Chengguang Ma, Shun'an Zhong, H. Dang
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引用次数: 11

Abstract

Stochastic arithmetic provide several benefits over traditional computing method such as high fault tolerance, simple hardware implementation, low hardware area. In order to increase accuracy of error analysis and improve method of performance evaluation for stochastic computing systems, a new variance transfer function for stochastic computing systems based on combinational logic is proposed in this work. The transfer function is proved by a new mathematical method: hypergeometric decomposition, which makes stochastic computing theory more perfect and reliable. According to the variance transfer function, several measurements based on variance are developed to evaluate performance between different stochastic computing algorithms. By comparing this method with traditional bit-level simulation method, variance measurements are proved to be less time consumption, more comprehensive, and more effective to evaluate and understand stochastic computing systems.
理解随机计算系统中的方差传播
与传统的计算方法相比,随机算法具有容错性高、硬件实现简单、硬件面积小等优点。为了提高随机计算系统误差分析的准确性,改进随机计算系统的性能评价方法,提出了一种基于组合逻辑的随机计算系统方差传递函数。用一种新的数学方法——超几何分解证明了传递函数,使随机计算理论更加完善和可靠。根据方差传递函数,提出了几种基于方差的度量来评价不同随机计算算法之间的性能。通过与传统的比特级模拟方法的比较,证明方差测量耗时更少,更全面,更有效地评估和理解随机计算系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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