Generalized approximate message passing for estimation with random linear mixing
SUNY Polytechnic Institute · New York University
Abstract
We consider the estimation of a random vector observed through a linear transform followed by a componentwise probabilistic measurement channel. Although such linear mixing estimation problems are generally highly non-convex, Gaussian approximations of belief propagation (BP) have proven to be computationally attractive and highly effective in a range of applications. Recently, Bayati and Montanari have provided a rigorous and extremely general analysis of a large class of approximate message passing (AMP) algorithms that includes many Gaussian approximate BP methods. This paper extends their analysis to a larger class of algorithms to include what we call generalized AMP (G-AMP). G-AMP incorporates general…
Citation impact
- FWCI
- 48.98
- Percentile
- 100%
- References
- 47
Authors
1Topics & keywords
- Belief propagation
- Message passing
- Additive white Gaussian noise
- Gaussian
- Applied mathematics
- Mixing (physics)
- Mathematics
- Range (aeronautics)