Analysis of neighborhood dynamics of forest ecosystems using likelihood methods and modeling
Authored by CD Canham, M Uriarte
Date Published: 2006
DOI: 10.1890/04-0657
Sponsors:
Mellon Foundation
United States National Science Foundation (NSF)
Platforms:
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Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
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Abstract
Advances in computing power in the past 20 years have led to a
proliferation of spatially explicit, individual-based models of
population and ecosystem dynamics. In forest ecosystems, the
individual-based models encapsulate an emerging theory of
``neighborhood{''} dynamics, in which fine-scale spatial interactions
regulate the demography of component tree species. The spatial
distribution of component species, in turn, regulates spatial variation
in a whole host of community and ecosystem properties, with subsequent
feedbacks on component species. The development of these models has been
facilitated by development of new methods of analysis of field data, in
which critical demographic rates and ecosystem processes are analyzed in
terms of the spatial distributions of neighboring trees and physical
environmental factors. The analyses are based on likelihood methods and
information theory, and they allow a tight linkage between the models
and explicit parameterization of the models from field data. Maximum.
likelihood methods have a long history of use for point and interval
estimation in statistics. In contrast, likelihood principles have only
more gradually emerged in ecology as the foundation for an alternative
to traditional hypothesis testing. The alternative framework stresses
the process of identifying and selecting among competing models, or in
the simplest case, among competing point estimates of a parameter of a
model. There are four general steps involved in a likelihood analysis:
(1) model specification, (2) parameter estimation using maximum
likelihood methods, (3) model comparison, and (4) model evaluation. Our
goal in this paper is to review recent developments in the use of
likelihood methods and modeling for the analysis of neighborhood
processes in forest ecosystems. We will focus on a single class of
processes, seed dispersal and seedling dispersion, because recent papers
provide compelling evidence of the potential power of the approach, and
illustrate some of the statistical challenges in applying the methods.
Tags
Dispersal
patterns
Recruitment
Leaf-litter
Explicit population-models
Tropical forest
Tree-soil interactions
Annual seed
production
Temperate forests
Interspecific variation