From Information Geometry to Jet Substructure: A Triality of Cumulant Tensors, Energy Correlators, and Hypergraphs
Aritra Bal, Markus Klute, Benedikt Maier, Michael Spannowsky

TL;DR
This paper introduces a novel framework linking Fisher tensors, cumulants, energy correlators, and hypergraphs to better understand multi-observable radiation patterns in jet substructure analysis.
Contribution
It develops a triality connecting Fisher tensors, cumulants, and hypergraphs, enabling physics-informed hypergraph construction and improved observable basis compression.
Findings
Cubic Fisher tensor reduces KL truncation error.
Hypergraph selector improves jet classification.
Fisher hypergraph retains more third-order information.
Abstract
Pairwise Fisher graphs capture local covariance information, but they cannot distinguish an irreducible multi-observable radiation pattern from a collection of ordinary pairwise correlations. We show that this missing structure is naturally supplied by higher-order Fisher tensors. In a finite basis of binned EECs, ECFs, or EFPs, and in the natural exponential-family coordinates generated by that basis, the same local tensor has three equivalent interpretations: a coefficient in the local Kullback-Leibler expansion, a connected cumulant of the chosen correlator observables, and a signed weight on a hyperedge linking those observables. This gives an exact Fisher-correlator-hypergraph triality in the local exponential-family embedding. The triality provides a direct construction of physics-informed hypergraphs from correlator data. Extending the quadratic Fisher matrix to the first…
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