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Statistical Graph Signal Recovery Using Variational Bayes

机译:使用变分贝内斯统计图表恢复

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This brief investigates the problem of Graph Signal Recovery (GSR) when the topology of the graph is not known in advance. In this brief, the elements of the weighted adjacency matrix is statistically related to normal distribution and the graph signal is assumed to be Gaussian Markov Random Field (GMRF). Then, the problem of GSR is solved by a Variational Bayes (VB) algorithm in a Bayesian manner by computing the posteriors in a closed form. The posteriors of the elements of weighted adjacency matrix are proved to have a new distribution which we call it Generalized Compound Confluent Hypergeometric (GCCH) distribution. Moreover, the variance of the noise is estimated by calculating its posterior via VB. The simulation results on synthetic and real-world data shows the superiority of the proposed Bayesian algorithm over some state-of-the-art algorithms in recovering the graph signal.
机译:当预先知道图的拓扑时,本简要调查图形信号恢复(GSR)的问题。 在此简述中,加权邻接矩阵的元素与正态分布统计学相关,并且曲线图信号被假设为高斯马尔可夫随机字段(GMRF)。 然后,通过以封闭形式计算后海底,通过计算后索,通过计算后海底的变差贝叶斯(VB)算法来解决GSR的问题。 证明了加权邻接矩阵元素的后簧具有新的分布,我们称之为广义化合物汇合超距(GCCH)分布。 此外,通过通过VB计算其后部来估计噪声的方差。 综合和实世界数据的仿真结果显示了在恢复图形信号的某些最先进的算法上提出的贝叶斯算法的优越性。

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