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Fast Variational Sparse Bayesian Learning With Automatic Relevance Determination for Superimposed Signals

机译:快速变分稀疏贝叶斯学习与自动相关性确定叠加信号

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摘要

In this work, a new fast variational sparse Bayesian learning (SBL) approach with automatic relevance determination (ARD) is proposed. The sparse Bayesian modeling, exemplified by the relevance vector machine (RVM), allows a sparse regression or classification function to be constructed as a linear combination of a few basis functions. It is demonstrated that, by computing the stationary points of the variational update expressions with noninformative (ARD) hyperpriors, a fast version of variational SBL can be constructed. Analysis of the computed stationary points indicates that SBL with Gaussian sparsity priors and noninformative hyperpriors corresponds to removing components with signal-to-noise ratio below a 0 dB threshold; this threshold can also be adjusted to significantly improve the convergence rate and sparsity of SBL. It is demonstrated that the pruning conditions derived for fast variational SBL coincide with those obtained for fast marginal likelihood maximization; moreover, the parameters that maximize the variational lower bound also maximize the marginal likelihood function. The effectiveness of fast variational SBL is demonstrated with synthetic as well as with real data.
机译:在这项工作中,提出了一种新的具有自动相关性确定(ARD)的快速变分稀疏贝叶斯学习(SBL)方法。稀疏贝叶斯建模,以相关向量机(RVM)为例,可以将稀疏回归或分类函数构造为一些基本函数的线性组合。证明了,通过使用非信息性(ARD)超优先级计算变异更新表达式的平稳点,可以构建变异SBL的快速版本。对所计算的平稳点的分析表明,具有高斯稀疏先验和非信息性超先验的SBL对应于去除信噪比低于0 dB阈值的分量;还可以调整该阈值以显着提高SBL的收敛速度和稀疏性。结果表明,为快速变化SBL导出的修剪条件与为快速边际似然最大化而获得的修剪条件一致;此外,使变化下限最大化的参数也使边缘似然函数最大化。快速变化的SBL的有效性已通过合成数据和实际数据得到了证明。

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