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Revealing beliefs: using ensemble ecosystem modelling to extrapolate expert beliefs to novel ecological scenarios
Author(s) -
Bode Michael,
Baker Christopher M.,
Benshemesh Joe,
Burnard Tim,
Rumpff Libby,
Hauser Cindy E.,
LahozMonfort José J.,
Wintle Brendan A.
Publication year - 2017
Publication title -
methods in ecology and evolution
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.425
H-Index - 105
ISSN - 2041-210X
DOI - 10.1111/2041-210x.12703
Subject(s) - expert elicitation , ecosystem , set (abstract data type) , computer science , range (aeronautics) , process (computing) , ecosystem services , environmental resource management , ecosystem model , construct (python library) , data science , ecology , environmental science , geography , biology , meteorology , programming language , operating system , materials science , composite material
Summary Ecosystem‐based management requires predictive models of ecosystem dynamics. There are typically insufficient empirical data available to parameterise these complex models, and so decision‐makers commonly rely on beliefs elicited from experts. However, such expert beliefs are necessarily limited because (i) only a small proportion of ecosystem components and dynamics have been observed; (ii) uncertainty about ecosystem dynamics can result in contradictory expert judgements and (iii) elicitation time and resources are limited. We use an ensemble of dynamic ecosystem models to extrapolate a limited set of stated expert beliefs into a wider range of revealed beliefs about how the ecosystem will respond to perturbations and management. Importantly, the method captures the expert uncertainty and propagates it through to predictions. We demonstrate this process and its potential value by applying it to the conservation of the threatened malleefowl ( Leipoa ocellata ) in the Murray mallee ecosystems of southern Australia. In two workshops, we asked experts to construct a qualitative ecosystem interaction network and to describe their beliefs about how the ecosystem will respond to particular perturbations. We used this information to constrain an ensemble of 10 9 community models, leaving a subset that could reproduce stated expert beliefs. We then interrogated this ensemble of models to reveal experts’ implicit beliefs about management scenarios that were not a part of the initial elicitation exercises. Our method uses straightforward questions to efficiently elicit expert beliefs, and then applies a flexible modelling approach to reveal those experts’ beliefs about the dynamics of the entire ecosystem. It allows rapid planning of ecosystem‐based management informed by expert judgement, and provides a basis for value‐of‐information analyses and adaptive management.

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