Expectation-maximization analysis of spatial time series
Expectation-maximization analysis of spatial time series
Date
2007-02-01
Authors
Smith, Keston W.
Aretxabaleta, Alfredo L.
Aretxabaleta, Alfredo L.
Linked Authors
Alternative Title
Citable URI
As Published
Date Created
Location
DOI
Related Materials
Replaces
Replaced By
Keywords
Abstract
Expectation maximization (EM) is used to estimate the parameters of a Gaussian Mixture Model for spatial time series data. The method is presented as an alternative
and complement to Empirical Orthogonal Function (EOF) analysis. The resulting weights, associating time
points with component distributions, are used to distinguish
physical regimes. The method is applied to equatorial Pacific
sea surface temperature data from the TAO/TRITON mooring
time series. Effectively, the EM algorithm partitions the
time series into El Nino, La Nina and normal conditions. The
EM method leads to a clearer interpretation of the variability
associated with each regime than the basic EOF analysis.
Description
© Author(s) 2007. This work is licensed
under a Creative Commons License. The definitive version was published in Nonlinear Processes in Geophysics 14 (2007): 73-77, doi: 10.5194/npg-14-73-2007
Embargo Date
Citation
Nonlinear Processes in Geophysics 14 (2007): 73-77