A Survey of Monte Carlo Methods for Parameter Estimation
D. Luengo, L. Martino, M. Bugallo, V. Elvira, S. S\"arkk\"a

TL;DR
This paper reviews Monte Carlo methods, especially MCMC and importance sampling, for estimating parameters in signal processing, highlighting their development, algorithms, and combined approaches.
Contribution
It provides a comprehensive survey of Monte Carlo techniques for static parameter estimation in signal processing, including historical context and algorithmic details.
Findings
Thorough overview of MC methods for parameter estimation.
Comparison of MCMC and importance sampling algorithms.
Discussion of combined MC approaches in signal processing.
Abstract
Statistical signal processing applications usually require the estimation of some parameters of interest given a set of observed data. These estimates are typically obtained either by solving a multi-variate optimization problem, as in the maximum likelihood (ML) or maximum a posteriori (MAP) estimators, or by performing a multi-dimensional integration, as in the minimum mean squared error (MMSE) estimators. Unfortunately, analytical expressions for these estimators cannot be found in most real-world applications, and the Monte Carlo (MC) methodology is one feasible approach. MC methods proceed by drawing random samples, either from the desired distribution or from a simpler one, and using them to compute consistent estimators. The most important families of MC algorithms are Markov chain MC (MCMC) and importance sampling (IS). On the one hand, MCMC methods draw samples from a proposal…
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