Modeling and Inferring Metacommunity Dynamics with Maximum Caliber
Zachary Jackson, Mathew A. Leibold, Robert D. Holt, BingKan Xue

TL;DR
This paper introduces a Maximum Caliber framework from statistical physics to infer parameters of complex ecological metacommunity dynamics from spatio-temporal data, enabling predictions far from equilibrium.
Contribution
It extends Maximum Entropy modeling to trajectories, allowing parameter inference of ecological processes from empirical data without extensive experiments.
Findings
Accurately estimates migration rates and interactions from data
Predicts dynamics of far-from-equilibrium metacommunities
Introduces entropy production as a measure of irreversibility
Abstract
A major challenge for community ecology is using spatio-temporal data to infer parameters of dynamical models without conducting laborious experiments. We present a novel framework from statistical physics -- Maximum Caliber -- to characterize the temporal dynamics of complex ecological systems in spatially extended landscapes and infer parameters from empirical data. As an extension of Maximum Entropy modeling, Maximum Caliber aims at modeling the probability of possible trajectories of a stochastic system, rather than focusing on system states. We demonstrate the ability of the Maximum Caliber framework to capture ecological processes ranging from near- to far from- equilibrium, using an array of species interaction motifs including random interactions, apparent competition, intraguild predation, and non-transitive competition, along with dispersal among multiple patches. For…
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Taxonomy
MethodsLogistic Regression
