Probing SMEFT Operators through $t\bar{t}t\bar{t}$ Production with Hyper-Graph Neural Networks at the LHC
Amir Subba, Sanmay Ganguly

TL;DR
This study employs a Hyper-Graph Neural Network to improve discrimination of $t\bar{t}t\bar{t}$ events at the LHC, enabling tighter constraints on SMEFT operators and enhancing signal detection over traditional methods.
Contribution
Introduction of a hyper-graph neural network architecture for analyzing complex event correlations in $t\bar{t}t\bar{t}$ production at the LHC, leading to improved sensitivity to SMEFT operators.
Findings
Achieved an AUC of 0.951 for $t\bar{t}t\bar{t}$ signal discrimination.
Obtained a statistical significance of Z=9.11 at 140 fb$^{-1}$ luminosity.
Derived tighter 95% CL limits on Wilson coefficients of dimension-six operators.
Abstract
We present a phenomenological study of production in proton-proton collisions at ~TeV, using a Hyper-Graph Neural Network (H-GNN) to discriminate multilepton signal events from the dominant SM backgrounds, namely , , , , single-top associated production, and diboson and triboson processes. In the H-GNN architecture each event is represented as a hypergraph whose nodes correspond to reconstructed jets and leptons and whose hyperedges encode higher-order correlations among arbitrary subsets of these objects, allowing the network to learn the many-body kinematic structures that characterize the final state. Combining same-sign di-lepton, tri-lepton, and four-lepton channels following a CMS-like event selection, the H-GNN attains an area under the ROC curve of for the …
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