Partonic distribution functions and amplitudes using tensor network methods
- URL: http://arxiv.org/abs/2501.09738v2
- Date: Thu, 06 Feb 2025 22:33:28 GMT
- Title: Partonic distribution functions and amplitudes using tensor network methods
- Authors: Zhong-Bo Kang, Noah Moran, Peter Nguyen, Wenyang Qian,
- Abstract summary: Parton distribution function (PDF) and distribution amplitude (DA) are non-perturbative quantities defined as light-cone correlators of quark and gluon fields.
We present exemplary numerical calculations with the Nambu-Jona-Lasinio model in 1+1 dimensions.
We evaluate the PDF and DA at various strong couplings in the large-qubit limit, which is consistent with expectations at perturbative and non-relativistic limits.
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- Abstract: Calculations of the parton distribution function (PDF) and distribution amplitude (DA) are highly relevant to core experimental programs as they provide non-perturbative inputs to inclusive and exclusive processes, respectively. Direct computation of the PDFs and DAs remains challenging because they are non-perturbative quantities defined as light-cone correlators of quark and gluon fields, and are therefore inherently time-dependent. In this work, we use a uniform quantum strategy based on tensor network simulation techniques to directly extract these hadronic quantities from first principles using the matrix product state of the hadrons in the same setup. We present exemplary numerical calculations with the Nambu-Jona-Lasinio model in 1+1 dimensions and compare with available exact diagonalization and quantum circuit simulation results. Using tensor networks, we evaluate the PDF and DA at various strong couplings in the large-qubit limit, which is consistent with expectations at perturbative and non-relativistic limits.
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