Alternative EM algorithms for nonlinear state-space models
Wahlstrom, J; Jalden, J; Skog, I; et al.Handel, P
Date: 6 September 2018
Publisher
IEEE
Publisher DOI
Abstract
The expectation-maximization algorithm is a commonly employed tool for system identification. However, for a
large set of state-space models, the maximization step cannot
be solved analytically. In these situations, a natural remedy
is to make use of the expectation-maximization gradient algorithm, i.e., to replace the maximization ...
The expectation-maximization algorithm is a commonly employed tool for system identification. However, for a
large set of state-space models, the maximization step cannot
be solved analytically. In these situations, a natural remedy
is to make use of the expectation-maximization gradient algorithm, i.e., to replace the maximization step by a single iteration of Newton’s method. We propose alternative expectationmaximization algorithms that replace the maximization step with
a single iteration of some other well-known optimization method.
These algorithms parallel the expectation-maximization gradient
algorithm while relaxing the assumption of a concave objective
function. The benefit of the proposed expectation-maximization
algorithms is demonstrated with examples based on standard
observation models in tracking and localization.
Computer Science
Faculty of Environment, Science and Economy
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