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Low Complexity Static and Dynamic Sparse Bayesian Learning Combining BP, VB and EP Message Passing

机译:结合BP,VB和EP消息传递的低复杂度静态和动态稀疏贝叶斯学习

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Sparse Bayesian Learning (SBL) provides sophisticated (state) model order selection with unknown support distribution. This allows to handle problems with big state dimensions and relatively limited data by exploiting variations in parameter importance. The techniques proposed in this paper allow to handle the extension of SBL to time-varying states, modeled as diagonal first-order auto-regressive (DAR(1)) processes with unknown parameters to be estimated also. Adding the parameters to the state leads to an augmented state and a non-linear (at least bilinear) state-space model. The proposed approach, which applies also to more general non-linear models, uses a combination of belief propagation (BP), Variational Bayes (VB) or mean field (MF) techniques, and Expectation Propagation (EP) to approximate the posterior marginal distributions of the scalar factors. We propose Fisher Information Matrix analysis to determine the variable split between the use of BP and VB allowing to stay optimal in terms of Laplace approximation.
机译:稀疏贝叶斯学习(SBL)提供复杂的(状态)模型订单选择,而支持分布未知。这允许通过利用参数重要性的变化来处理状态尺寸较大和数据相对有限的问题。本文提出的技术允许处理SBL到时变状态的扩展,建模为具有未知参数的对角一阶自回归(DAR(1))过程,也可以对其进行估计。将参数添加到状态会导致增强状态和非线性(至少是双线性)状态空间模型。所提出的方法也适用于更一般的非线性模型,它使用了置信传播(BP),变分贝叶斯(VB)或均值场(MF)技术以及期望传播(EP)的组合来近似后验边缘分布标量因子。我们提出Fisher信息矩阵分析,以确定使用BP和VB之间的变量划分,从而在拉普拉斯逼近方面保持最佳状态。

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