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Graph Topology Learning and Signal Recovery Via Bayesian Inference

机译:通过贝叶斯推理进行图拓扑学习和信号恢复

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The estimation of a meaningful affinity graph has become a crucial task for representation of data, since the underlying structure is not readily available in many applications. In this paper, a topology inference framework, called Bayesian Topology Learning, is proposed to estimate the underlying graph topology from a given set of noisy measurements of signals. It is assumed that the graph signals are generated from Gaussian Markov Random Field processes. First, using a factor analysis model, the noisy measured data is represented in a latent space and its posterior probability density function is found. Thereafter, by utilizing the minimum mean square error estimator and the Expectation Maximization (EM) procedure, a filter is proposed to recover the signal from noisy measurements and an optimization problem is formulated to estimate the underlying graph topology. The experimental results show that the proposed method has better performance when compared to the current state-of-the-art algorithms with different performance measures.
机译:有意义的亲和图的估计已成为表示数据的关键任务,因为在许多应用程序中底层结构都不容易获得。在本文中,提出了一种称为贝叶斯拓扑学习的拓扑推理框架,用于根据给定的一组噪声测量值来估计基础图拓扑。假设图形信号是从高斯马尔可夫随机场过程生成的。首先,使用因子分析模型,在潜在空间中表示嘈杂的测量数据,并找到其后验概率密度函数。此后,通过利用最小均方误差估计器和期望最大化(EM)程序,提出了一种滤波器来从噪声测量中恢复信号,并提出了一个优化问题来估计底层图形拓扑。实验结果表明,与具有不同性能指标的最新算法相比,该方法具有更好的性能。

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