2018
DOI: 10.1111/2041-210x.13091
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GMSE: An r package for generalised management strategy evaluation

Abstract: Management strategy evaluation (MSE) is a powerful tool for simulating all key aspects of natural resource management under conditions of uncertainty. We present the r package generalised management strategy evaluation (GMSE), which applies genetic algorithms to provide a generalised tool for simulating adaptive decision‐making management scenarios between stakeholders with competing objectives under complex social‐ecological interactions and uncertainty. GMSE models can be agent‐based and spatially explicit, … Show more

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Cited by 12 publications
(30 citation statements)
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“…Big data generated from online games could be applied to suggest novel solutions to real-world problems (e.g., Khatib et al 2011). Data could also be used to parameterise social-ecological models, which are currently limited in their ability to accurately model complex and goal-oriented human decision-making (Schlüter et al 2012;Duthie et al 2018). For example, videogame data might be used to build a robust Artificial Intelligence of stakeholder decision making in agent-based models to better predict biodiversity change across different local land conditions and management policies.…”
Section: Resultsmentioning
confidence: 99%
“…Big data generated from online games could be applied to suggest novel solutions to real-world problems (e.g., Khatib et al 2011). Data could also be used to parameterise social-ecological models, which are currently limited in their ability to accurately model complex and goal-oriented human decision-making (Schlüter et al 2012;Duthie et al 2018). For example, videogame data might be used to build a robust Artificial Intelligence of stakeholder decision making in agent-based models to better predict biodiversity change across different local land conditions and management policies.…”
Section: Resultsmentioning
confidence: 99%
“…Furthermore, publications describing the use of packages in ecology and evolution strongly suggest that the package will be functional and potentially appropriate to your own adventure, that is, see the R package codyn on CRAN for community dynamic measures with documentation and a peer‐reviewed publication to describe it in depth (Hallett et al, ). There are many other examples also published in the journal Methods in Ecology and Evolution (Duthie et al, ; Harmer & Thomas, ; Remelgado, Wegmann, & Safi, ; Wubs et al, ). Another important attribute of packages is the frequency of use.…”
Section: Checklistmentioning
confidence: 97%
“…Methods in Ecology and Evolution(Duthie et al, 2018;Harmer & Thomas, 2019;Remelgado, Wegmann, & Safi, 2019;Wubs et al, 2019). Another important attribute of packages is the frequency of use.…”
mentioning
confidence: 99%
“…Overview of the generalized management strategy evaluation (GMSE) approach used in this study. by the manager is implemented using a genetic algorithm that finds an adaptive, but not necessarily optimal, policy, thereby mimicking a goal-oriented process prone to human error (see Duthie et al 2018 for more details). The resulting quota is then transferred to the harvest submodel, which also calls a genetic algorithm to determine a harvest that minimizes deviation from a user-specific target abundance (N U ) whilst taking into account varying levels of user budget (Appendix 1, Fig.…”
Section: Modeling Frameworkmentioning
confidence: 99%
“…Model simulations were carried out in R (version 3.4.3) using the package GMSE (version 0.4.0.11; Duthie et al 2018). The R code used to produce simulations is provided in Appendix 2, and the definition and values for set and derived parameters are presented in Appendix 3, Table A3.1.…”
Section: Simulation and Statistical Analysismentioning
confidence: 99%