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Naive Mean Field Approximation for Sourlas Error Correcting Code

机译:Sourlas纠错码的朴素平均场近似

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Solving the error correcting code is an important goal with regard to communication theory. To reveal the error correcting code characteristics, several researchers have applied a statistical-mechanical approach to this problem. In our research, we have treated the error correcting code as a Bayes inference framework. Carrying out the inference in practice, we have applied the NMF (naive mean field) approximation to the MPM (maximizer of the posterior marginals) inference, which is a kind of Bayes inference. In the field of artificial neural networks, this approximation is used to reduce computational cost through the substitution of stochastic binary units with the deterministic continuous value units. However, few reports have quantitatively described the performance of this approximation. Therefore, we have analyzed the approximation performance from a theoretical viewpoint, and have compared our results with the computer simulation.
机译:对于通信理论,解决纠错码是一个重要的目标。为了揭示纠错码的特征,一些研究人员已经对这一问题采用了统计机械方法。在我们的研究中,我们将纠错代码视为贝叶斯推理框架。在实践中进行推断,我们将NMF(朴素均值场)近似应用于MPM(后边际最大化)推断,这是一种贝叶斯推断。在人工神经网络领域中,该近似方法用于通过用确定性连续值单位替换随机二进制单位来减少计算成本。但是,很少有报道定量描述这种近似的性能。因此,我们从理论角度分析了逼近性能,并将我们的结果与计算机仿真进行了比较。

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