A Bayesian approach for the estimation of model parameters from noisy data sets
Journal
IEEE Signal Processing Letters
Journal Volume
12
Journal Issue
8
Pages
553-556
Date Issued
2005
Author(s)
Payne S.J.
Abstract
A Bayesian method is proposed for estimating model parameters from noisy data sets. The method is based on maximizing the posterior kernel, which enables priors on the model parameters to be incorporated. The posterior kernel is found by specifying hyperpriors and integrating the priors out, due to the use of conjugate priors. The use of probability models enables simultaneous data streams to be used to maximize the posterior kernel. The solution is found using an iterative scheme. The algorithm's performance is briefly illustrated using a real data set, demonstrating rapid convergence. ? 2005 IEEE.
Subjects
Algorithms
Convergence of numerical methods
Integration
Iterative methods
Mathematical models
Probability
Bayes procedure
Bayesian method
Probability models
Parameter estimation
Type
journal article