Dynamic Bayesian network inferencing for non-homogeneous complex systems


Autoria(s): Wu, Paul P.; Caley, M. Julian; Kendrick, Gary A.; McMahon, Kathryn; Mengersen, Kerrie
Data(s)

07/01/2016

Resumo

Dynamic Bayesian Networks (DBNs) provide a versatile platform for predicting and analysing the behaviour of complex systems. As such, they are well suited to the prediction of complex ecosystem population trajectories under anthropogenic disturbances such as the dredging of marine seagrass ecosystems. However, DBNs assume a homogeneous Markov chain whereas a key characteristics of complex ecosystems is the presence of feedback loops, path dependencies and regime changes whereby the behaviour of the system can vary based on past states. This paper develops a method based on the small world structure of complex systems networks to modularise a non-homogeneous DBN and enable the computation of posterior marginal probabilities given evidence in forwards inference. It also provides an approach for an approximate solution for backwards inference as convergence is not guaranteed for a path dependent system. When applied to the seagrass dredging problem, the incorporation of path dependency can implement conditional absorption and allows release from the zero state in line with environmental and ecological observations. As dredging has a marked global impact on seagrass and other marine ecosystems of high environmental and economic value, using such a complex systems model to develop practical ways to meet the needs of conservation and industry through enhancing resistance and/or recovery is of paramount importance.

Formato

application/pdf

text/html

Identificador

http://eprints.qut.edu.au/91712/

Publicador

Wiley-Blackwell Publishing Ltd.

Relação

http://eprints.qut.edu.au/91712/1/Wu_etal_2015_main.pdf

http://eprints.qut.edu.au/91712/2/Wu_etal_2015_supplementary.pdf

Wu, Paul P., Caley, M. Julian, Kendrick, Gary A., McMahon, Kathryn, & Mengersen, Kerrie (2016) Dynamic Bayesian network inferencing for non-homogeneous complex systems. Biometrics. (In Press)

Direitos

Copyright 2016 Wiley-Blackwell Publishing Ltd.

Fonte

ARC Centre of Excellence for Mathematical & Statistical Frontiers (ACEMS); Institute for Future Environments; School of Mathematical Sciences; Science & Engineering Faculty

Palavras-Chave #010401 Applied Statistics #010405 Statistical Theory #060205 Marine and Estuarine Ecology (incl. Marine Ichthyology) #Dynamic Bayesian Networks #Non-homogeneous Markov Chains #Complex Systems #Spatio-temporal #Modelling
Tipo

Journal Article