Learning the Space of Collider Events
ORAL
Abstract
The Energy Mover's Distance (EMD) imposes a metric on the space of collider events. This metric is desirable because it packages many essential physics properties, such as standard observables and infrared and collinear (IRC) safety, under a single geometric framework. However, an exact EMD solver scales as N^3log(N) and even approximation methods scale worse than N^2, which becomes increasingly unsustainable on large/complicated datasets. We propose predicting the EMD using a Particle Flow Network (PFN), which is a Deep Sets architecture for particle physics. We demonstrate that not only can the PFN predict the EMD to a high degree of accuracy much faster than traditional approaches, but it also learns key properties of the underlying metric space.
*We are deeply grateful for the support this work obtained in its early stages in the form of a seed grant from the Brown University Data Science Institute. This material is based upon work supported by the U.S. Department of Energy, Office of Science, Office of High Energy Physics under Award Number DE-SC0026285.
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Presenters
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Rishabh Jain
- Brown University