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Poster
in
Workshop: Machine Learning and the Physical Sciences

Graphical Models are All You Need: Per-interaction reconstruction uncertainties in a dark matter detection experiment

Christina Peters · Aaron Higuera · Shixiao Liang · Waheed Bajwa · Christopher Tunnell


Abstract:

We demonstrate that Bayesian networks fill a significant methodology gap for uncertainty quantification in particle physics, providing a framework for modeling complex systems with physical constraints. To address the problem of interaction position reconstruction in dark matter direct-detection experiments, we built a Bayesian network that utilizes domain knowledge of the system in both the structure of the graph and the representation of the random variables. This method yielded highly informative per-interaction uncertainties that were previously unattainable using existing methodologies, while also demonstrating comparable precision on reconstructed positions.

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