Deep learning topological inference-guided Tcc+ pole parameter extraction

Abstract

We perform a data-driven study of the doubly charmed tetraquark candidate Tcc+. An ensemble of deep neural network classifiers, trained on synthetic amplitudes with controlled analytic structures, identifies a dominant pole topology characterized by an isolated pole on the [bt] Riemann sheet which is robust against left-hand cut effects. A subsequent pole parameter extraction was performed via the uniformized S-matrix and a complementary K-matrix parameterization, which respectively provides a model-independent baseline and dynamical insight on the pole position and trajectory of the resonant state. Using this two-pronged approach, we submit that the Tcc+ is a shallow D0D*+ bound state in the second Riemann sheet of the complex plane.

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