Lund Plane to Bloch (LP2B) Encoding for Object and Polarization Tagging with Quantum Jet Substructure
Fabrizio Napolitano, Luca Della Penna, Tommaso Tedeschi, Livio Fan\`o

TL;DR
This paper introduces the LP2B encoding and a quantum neural network for jet substructure analysis, achieving competitive performance with fewer parameters and better robustness than classical methods.
Contribution
The work presents a novel quantum encoding and architecture for jet tagging that matches classical deep learning performance with significantly fewer parameters and improved robustness.
Findings
QTTN matches LundNet in polarization tagging performance.
QTTN requires three orders of magnitude fewer parameters.
QTTN outperforms classical methods in low-data regimes.
Abstract
The application of quantum algorithms to jet substructure analysis is of growing interest as NISQ hardware continues to mature in qubit count and gate depth. Jet substructure remains essential for addressing demanding and complementary challenges at the LHC and beyond, notably object classification and polarization tagging. However, existing quantum machine learning approaches typically rely on data representations that suffer from infrared and collinear unsafety, sensitivity to non-perturbative effects, or poor scalability. In this work, we introduce the Lund Plane to Bloch (LP2B) encoding, designed to map a theoretically clean and robust representation of jet kinematics directly into qubit states. Leveraging this encoding, we implement a Quantum Tree-Topology Network (QTTN) that natively embeds the hierarchical structure of the Lund tree. We evaluate the QTTN across multiple…
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