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Exploiting the Full Potential of Bayesian Networks in Predictive Ecology

Although ecological models used to make predictions from underlying covariates have a record of success, they also suffer from limitations. They are typically unable to make predictions when the value of one or more covariates is missing during the testing. Missing values can be estimated but methods are often unreliable and can result in poor accuracy. Similarly, missing values during the training can hinder parameter estimation of many ecological models. Bayesian networks can handle these and other limiting issues, such as having highly correlated covariates. However, they are rarely used to their full potential. Indeed, Bayesian networks are commonly used to evaluate the knowledge of experts by constructing the network manually and often (incorrectly) interpreting the resulting network causally. We provide an approach to learn a Bayesian network fully from observed data, without relying on experts and show how to appropriately interpret the resulting network, both to identify how the variables (covariates and target) are interrelated and to answer probabilistic queries. We apply this method to the case study of a mountain pine beetle infestation and find that the trained Bayesian network has a predictive accuracy of 0.88 AUC. We classify the covariates as primary and secondary in terms of contributing to the prediction and show that the predictive accuracy does not deteriorate when the secondary covariates are missing and degrades to only 0.76 when one of the primary covariates is missing. As a complement to the previous work on constructing Bayesian networks by hand, we show that if instead, both the structure and parameters are learned only from data, we can achieve more accurate predictions as well as generate new insights about the underlying processes.

Citation

P. Ramazi, M. Kunegel-Lion, R. Greiner, M. Lewis. "Exploiting the Full Potential of Bayesian Networks in Predictive Ecology". Methods in Ecology and Evolution, October 2020.

Keywords: mathematical biology, machine learning
Category: In Journal
Web Links: journal

BibTeX

@article{Ramazi+al:20,
  author = {Pouria Ramazi and Mélodie Kunegel-Lion and Russ Greiner and Mark
    A Lewis},
  title = {Exploiting the Full Potential of Bayesian Networks in Predictive
    Ecology},
  journal = {Methods in Ecology and Evolution},
  year = 2020,
}

Last Updated: February 22, 2021
Submitted by Russ Greiner

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