Following up on our earlier study in [J. Bardhan et al., Machine learning-enhanced search for a vectorlike singlet B quark decaying to a singlet scalar or pseudoscalar, Phys. Rev. D 107 (2023) 115001;arXiv:2212.02442], we investigate the LHC prospects of pair-produced vectorlike quarks decaying exotically to a new gauge-singlet (pseudo)scalar field and a quark. After the electroweak symmetry breaking, the decays predominantly to final states, leading to a fully hadronic or signature. Because of the large Standard Model background and the lack of leptonic handles, it is a difficult channel to probe. To overcome the challenge, we employ a hybrid deep learning model containing a graph neural network followed by a deep neural network. We estimate that such a state-of-the-art deep learning analysis pipeline can lead to a performance comparable to that in the semi-leptonic mode, taking the discovery (exclusion) reach up to about ~TeV at HL-LHC when decays fully exotically, i.e., BR.
View on arXiv@article{bardhan2025_2505.07769, title={ Tagging fully hadronic exotic decays of the vectorlike $\mathbf{B}$ quark using a graph neural network }, author={ Jai Bardhan and Tanumoy Mandal and Subhadip Mitra and Cyrin Neeraj and Mihir Rawat }, journal={arXiv preprint arXiv:2505.07769}, year={ 2025 } }