Convergent Approximate Message Passing by Alternating Constrained Minimization of Bethe Free Energy

D. Slock
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引用次数: 3

Abstract

Approximate Message Passing (AMP) allows for Bayesian inference in linear models with non identically independently distributed (n.i.i.d.) Gaussian priors and measurements of the linear mixture outputs with n.i.i.d. Gaussian noise. It represents an efficient technique for approximate inference which becomes accurate when both rows and columns of the measurement matrix can be treated as sets of independent vectors and both dimensions become large. It has been shown that the fixed points of AMP correspond to extrema of a large system limit of the Bethe Free Energy (LSL-BFE), which represents a meaningful approximation optimization criterion regardless of whether the measurement matrix exhibits the independence properties. However, the convergence of AMP can be notoriously problematic for certain measurement matrices and the only sure fix so far is damping (by a difficult to determine amount). In this paper we revisit the AMP algorithm by rigorously applying an alternating constrained minimization strategy to an appropriately reparameterized LSL-BFE with matched variable and constraint partitioning. This guarantees convergence, and due to convexity in the Gaussian case, to the global optimum. We show that the AMP estimates converge to the Linear Minimum Mean Squared Error (LMMSE) estimates, regardless of the behavior of the variances. In the LSL, the variances also converge to the LMMSE values, and hence to the correct values.
贝特自由能交替约束最小化的收敛近似信息传递
近似消息传递(AMP)允许在具有非同独立分布(n.i.i.d)的线性模型中进行贝叶斯推理。高斯先验和测量的线性混合输出与n.i.i.d高斯噪声。它是一种有效的近似推理方法,当测量矩阵的行和列都可以作为独立的向量集,且两个维数都变大时,近似推理就变得准确了。结果表明,AMP的不动点对应于大系统极限贝特自由能(LSL-BFE)的极值,无论测量矩阵是否具有独立性,这都是一个有意义的近似优化准则。然而,对于某些测量矩阵,AMP的收敛性可能是出了名的问题,迄今为止唯一确定的修复方法是阻尼(难以确定的量)。本文通过将交替约束最小化策略严格应用于具有匹配变量和约束划分的适当重参数化LSL-BFE,重新审视了AMP算法。这保证了收敛性,并且由于高斯情况下的凸性,保证了全局最优。我们证明AMP估计收敛于线性最小均方误差(LMMSE)估计,而不管方差的行为。在LSL中,方差也收敛于LMMSE值,从而收敛于正确的值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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