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Statistical inference for stochastic simulation models – theory and application

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TLDR
Approximate Bayesian Computing and Pattern-Oriented Modelling are discussed, their potential for integrating stochastic simulation models into a unified framework for statistical modelling is demonstrated, and principles and advantages of these methods are discussed.
Abstract
Statistical models are the traditional choice to test scientific theories when observations, processes or boundary conditions are subject to stochasticity Many important systems in ecology and biology, however, are difficult to capture with statistical models Stochastic simulation models offer an alternative, but they were hitherto associated with a major disadvantage: their likelihood functions can usually not be calculated explicitly, and thus it is difficult to couple them to well-established statistical theory such as maximum likelihood and Bayesian statistics A number of new methods, among them Approximate Bayesian Computing and Pattern-Oriented Modelling, bypass this limitation These methods share three main principles: aggregation of simulated and observed data via summary statistics, likelihood approximation based on the summary statistics, and efficient sampling We discuss principles as well as advantages and caveats of these methods, and demonstrate their potential for integrating stochastic simulation models into a unified framework for statistical modelling

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Pattern-oriented modelling: a ‘multi-scope’ for predictive systems ecology

TL;DR: A mini-review of applications of POM confirms that making the selection and use of patterns more explicit and rigorous can facilitate the development of models with the right level of complexity to understand ecological systems and predict their response to novel conditions.
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How to understand species' niches and range dynamics: a demographic research agenda for biogeography

TL;DR: A demographic research agenda is formulated that entails advances in incorporating process-based models of demographic responses and range dynamics into a statistical framework, systematic collection of data on temporal changes in distribution and abundance and on the response of demographic rates to environmental variation, and improved theoretical understanding of the scaling of demographics rates and the dynamics of spatially coupled populations.
Posted Content

Facilitating Parameter Estimation and Sensitivity Analysis of Agent-Based Models: A Cookbook Using NetLogo and R

TL;DR: The overall aim is to make agent-based modellers aware of existing methods and tools for parameter estimation and sensitivity analysis and to provide accessible tools for using these methods.
Journal ArticleDOI

Intraspecific trait variation across scales: implications for understanding global change responses.

TL;DR: It is argued that many common modeling approaches can allow a stronger consideration of intraspecific trait variation if the necessary data are available, and existing data need to be made more accessible.
References
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Journal ArticleDOI

Bayesian measures of model complexity and fit

TL;DR: In this paper, the authors consider the problem of comparing complex hierarchical models in which the number of parameters is not clearly defined and derive a measure pD for the effective number in a model as the difference between the posterior mean of the deviances and the deviance at the posterior means of the parameters of interest, which is related to other information criteria and has an approximate decision theoretic justification.
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A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian tracking

TL;DR: Both optimal and suboptimal Bayesian algorithms for nonlinear/non-Gaussian tracking problems, with a focus on particle filters are reviewed.
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Novel approach to nonlinear/non-Gaussian Bayesian state estimation

TL;DR: An algorithm, the bootstrap filter, is proposed for implementing recursive Bayesian filters, represented as a set of random samples, which are updated and propagated by the algorithm.
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