On the use of stationary versus hidden Markov models to detect simple versus complex ecological dynamics

On the use of stationary versus hidden Markov models to detect simple versus complex ecological dynamics

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Article ID: iaor20071875
Country: Netherlands
Volume: 185
Issue: 2/4
Start Page Number: 177
End Page Number: 193
Publication Date: Jul 2005
Journal: Ecological Modelling
Authors: ,
Keywords: markov processes
Abstract:

The stationary Markov model (SMM) has been used to study simple ecological dynamics, such as classic Clementsian succession towards a climax. There has been considerable dissatisfaction among ecologists, however, because succession has been found to display complex dynamics. The application of hidden Markov models (HMM) is proposed for two reasons: (1) they can have multiple states with observations that need not converge on a stable configuration and (2) the hidden states allow for the detection of underlying ecological processes. A comparative analysis is made between the well-known SMM and the lesser known HMM using a range of hypothetical species response types with concentration on the prediction of ecological observation sequences and the detection of underlying ecological processes. The HMM provides similar predictive ability to that of the SMM in the case of simple dynamics but shows considerably improved performance for complex dynamics. The HMM also provides increased interpretive capabilities by suggesting where transitions in underlying hidden states can be identified, even when not apparent in the observable dynamics.

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