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A new method for performance evaluation of bit decoding algorithms using statistics of the log likelihood ratio

机译:利用对数似然比统计信息进行比特解码算法性能评估的新方法

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This paper presents a new method for the performance evaluation of bit decoding algorithms. The method is based on estimating the probability density function (pdf) of the bit log likelihood ratio (LLR) by using an exponential model. It is widely known that the pdf of the bit LLR is close to the normal density. The proposed approach takes advantage of this property to present an efficient algorithm for the pdf estimation. The moment matching method is combined with the maximum entropy principle to estimate the underlying parameters. We present a simple method for computing the probabilities of the point estimates for the estimated parameters, as well as for the bit error rate. The corresponding results are used to compute the number of samples that are required for a given precision of the estimated values. It is demonstrated that this method requires significantly fewer samples as compared to the conventional Monte-Carlo simulation.
机译:本文提出了一种新的比特解码算法性能评估方法。该方法基于通过使用指数模型来估计比特对数似然比(LLR)的概率密度函数(pdf)。众所周知,位LLR的pdf接近正常密度。所提出的方法利用这一性质来提出一种用于pdf估计的有效算法。矩匹配方法与最大熵原理相结合来估计基本参数。我们提出了一种简单的方法来计算估计参数的点估计概率以及误码率。相应的结果用于计算给定精度的估计值所需的样本数量。结果表明,与传统的蒙特卡洛模拟相比,该方法所需的样本数量少得多。

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