Samantha Low Choy
Queensland University of Technology
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Publication
Featured researches published by Samantha Low Choy.
ieee international conference on high performance computing data and analytics | 2010
Allan James; Samantha Low Choy; Kerrie Mengersen
Expert elicitation is the process of retrieving and quantifying expert knowledge in a particular domain. Such information is of particular value when the empirical data is expensive, limited or unreliable. This paper describes a new software tool, called Elicitator, which assists in quantifying expert knowledge in a form suitable for use as a prior model in Bayesian regression. Potential environmental domains for applying this elicitation tool include habitat modelling, assessing detectability or eradication, ecological condition assessments, risk analysis and quantifying inputs to complex models of ecological processes. The tool has been developed to be user-friendly, extensible and facilitate consistent and repeatable elicitation of expert knowledge across these various domains. We demonstrate its application to elicitation for logistic regression in a geographically based ecological context. The underlying statistical methodology is also novel, utilizing an indirect elicitation approach to target expert knowledge on a case-by-case basis. For several elicitation sites (or cases), experts are asked simply to quantify their estimated ecological response (e.g. probability of presence), and its range of plausible values, after inspecting (habitat) covariates via GIS.
PLOS ONE | 2011
Wenbiao Hu; Rebecca A. O'Leary; Kerrie Mengersen; Samantha Low Choy
Background Classification and regression tree (CART) models are tree-based exploratory data analysis methods which have been shown to be very useful in identifying and estimating complex hierarchical relationships in ecological and medical contexts. In this paper, a Bayesian CART model is described and applied to the problem of modelling the cryptosporidiosis infection in Queensland, Australia. Methodology/Principal Findings We compared the results of a Bayesian CART model with those obtained using a Bayesian spatial conditional autoregressive (CAR) model. Overall, the analyses indicated that the nature and magnitude of the effect estimates were similar for the two methods in this study, but the CART model more easily accommodated higher order interaction effects. Conclusions/Significance A Bayesian CART model for identification and estimation of the spatial distribution of disease risk is useful in monitoring and assessment of infectious diseases prevention and control.
Ecology | 2009
Samantha Low Choy; Rebecca A. O'Leary; Kerrie Mengersen
Journal of Applied Ecology | 2009
Justine Murray; Anne W. Goldizen; Rebecca O’Leary; Clive McAlpine; Hugh P. Possingham; Samantha Low Choy
Atmospheric Environment | 2011
Jaime F. Mejia; Samantha Low Choy; Kerrie Mengersen; Lidia Morawska
Environmetrics | 2009
Rebecca A. O'Leary; Samantha Low Choy; Justine Murray; Mary Kynn; Robert Denham; Tara G. Martin; Kerrie Mengersen
Biological Conservation | 2010
Michael Powell; Arnon Accad; M. P. Austin; Samantha Low Choy; Kristen J. Williams; Alison Shapcott
ieee international conference on high performance computing data and analytics | 2010
Samantha Low Choy; Justine Murray; Allan James; Kerrie Mengersen
ieee international conference on high performance computing data and analytics | 2009
Samantha Low Choy; Allan James; Kerrie Mengersen
Applied Thermal Engineering | 2013
Timothy A. Bodisco; Samantha Low Choy; Richard J. Brown
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Commonwealth Scientific and Industrial Research Organisation
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