Bayesian Event Categorization Matrix Approach for Explosion Monitoring
Scott Koermer, Joshua D. Carmichael, Brian J. Williams

TL;DR
This paper introduces a Bayesian extension to the Event Categorization Matrix model for explosion monitoring, enabling better classification with sparse data and reducing false rates, demonstrated through experiments with synthetic and real data.
Contribution
The paper presents a Bayesian update to the ECM model that handles partial observations and variable covariance structures, enhancing explosion event categorization accuracy.
Findings
Bayesian ECM outperforms classic ECM in accuracy.
Reduced false negative rates with Bayesian approach.
Consistent improvements shown in Monte Carlo experiments.
Abstract
Current efforts to correctly categorize natural events from suspected explosion sources with data that is collected by ground- or space-based sensors presents historical challenges that remain unaddressed by the Event Categorization Matrix (ECM) model. Smaller historical events (lower yield explosions) often include only sparse observations among few modalities and can therefore lack a complete set of discriminants. The covariance structures can also vary significantly between such observations of event (source-type) categories. Both obstacles are problematic for the ``classic'' Event Categorization Matrix model. Our work addresses this gap and presents a Bayesian update to the previous Event Categorization Matrix model, termed the Bayesian Event Categorization Matrix model, which can be trained on partial observations and does not rely on a pooled covariance structure. We further…
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Taxonomy
TopicsRisk and Safety Analysis
MethodsSparse Evolutionary Training
