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We present a new approach to jet definition as an alternative to methods that exploit kinematic data directly, such as the anti-$k_T$ scheme; we use the kinematics to represent the particles in an event in a new multidimensional space. The latter is constituted by the eigenvectors of a matrix of kinematic relations between particles, and the resulting partition is called spectral clustering. After confirming its Infra-Red (IR) safety, we compare its performance to the anti-$k_T$ algorithm in reconstructing relevant final states. We base this on Monte Carlo (MC) samples generated from the following processes: $(ggto H_{125,text{GeV}} rightarrow H_{40,text{GeV}} H_{40,text{GeV}} rightarrow b bar{b} b bar{b}), (ggto H_{500,text{GeV}} rightarrow H_{125,text{GeV}} H_{125,text{GeV}} rightarrow b bar{b} b bar{b})$ and $(gg,qbar qto tbar tto bbar b W^+W^-to bbar b jj ell u_ell)$. Finally, we show that the results for spectral clustering are obtained without any change in the algorithms parameter settings, unlike the anti-$k_T$ case, which requires the cone size to be adjusted to the physics process under study.
We reframe common tasks in jet physics in probabilistic terms, including jet reconstruction, Monte Carlo tuning, matrix element - parton shower matching for large jet multiplicity, and efficient event generation of jets in complex, signal-like region
In this work, we present an overview of experimental considerations relevant to the utilization of jets at a future Electron-Ion Collider (EIC), a subject which has been largely overlooked up to this point. A comparison of jet-finding algorithms and
We propose a new jet algorithm for deep-inelastic scattering (DIS) that accounts for the forward-backward asymmetry in the Breit frame. The Centauro algorithm is longitudinally invariant and can cluster jets with Born kinematics, which enables novel
We suggest that the exclusive Higgs + light (or b)-jet production at the LHC, $pp to h+j(j_b)$, is a rather sensitive probe of the light-quarks Yukawa couplings and of other forms of new physics (NP) in the Higgs-gluon $hgg$ and quark-gluon $qqg$ int
Jets from boosted heavy particles have a typical angular scale which can be used to distinguish them from QCD jets. We introduce a machine learning strategy for jet substructure analysis using a spectral function on the angular scale. The angular spe