Moment Pooling: Gaining Performance and Interpretability Through Physics Inspired Product Structures
ORAL
Abstract
As machine learning begins to play an increasingly larger role in high energy physics, it is important to understand and interpret what precisely these models learn. In this work, we propose Moment Pooling architectures, which generalizes the summation in standard Deep Sets architectures to an arbitrary multivariate moments or cumulants. This can be used to drastically decrease latent space sizes, significantly improving the model's interpretability while maintaining performance. We show that this is particularly useful in jet physics, where many existing useful jet observables can be naturally expressed in this form. We then show several examples of how the Moment Pooling architecture may be used in jet tagging.
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Publication: Associated paper expected in Spring 2023 (No reference)
Presenters
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Rikab Gambhir
Massachusetts Institute of Technology
Authors
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Rikab Gambhir
Massachusetts Institute of Technology
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Jesse D Thaler
Massachusetts Institute of Technology MIT
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Athis Osathapan
Bowdoin College