A Variational Approach to Parameter Estimation for Characterizing 2-D Cluster Variation Method Topographies
Alianna J. Maren

TL;DR
This paper introduces a variational method to estimate parameters for 2-D cluster variation models, enabling better characterization of topographies by matching computational results with analytical solutions under equiprobability conditions.
Contribution
It presents a novel approach for selecting optimal two-parameter sets in 2-D CVM topographies using variational inference techniques, specifically for equiprobable state conditions.
Findings
Configuration variables align with analytical predictions.
h-values increase with pattern complexity.
Method effectively characterizes natural topographies.
Abstract
One of the biggest challenges in characterizing 2-D topographies is succinctly communicating the dominant nature of local configurations. In a 2-D grid composed of bistate units, this could be expressed as finding the characteristic configuration variables such as nearest-neighbor pairs and triplet combinations. The 2-D cluster variation method (CVM) provides a theoretical framework for associating a set of configuration variables with only two parameters, for a system that is at free energy equilibrium. This work presents a method for determining which of many possible two-parameter sets provides the ``most suitable'' match for a given 2-D topography, drawing from methods used for variational inference. This particular work focuses exclusively on topographies for which the activation enthalpy parameter (epsilon_0) is zero, so that the distribution between two states is equiprobable.…
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Taxonomy
TopicsComplex Network Analysis Techniques
