Spectral Clustering for Jet Physics
Abstract
We present a new approach to jet definition alternative to clustering methods, such as the anti-kT scheme, that exploit kinematic data directly. Instead the new method uses kinematic information to represent the particles in a multidimensional space, as in spectral clustering. After confirming its Infra-Red (IR) safety, we compare its performance in analysing qq H125\,GeV → H40\,GeV H40\,GeV → b b b b, qq H500\,GeV → H125\,GeV H125\,GeV → b b b b and gg,q q t t b b W+W- b b jj events from Monte Carlo (MC) samples, specifically, in reconstructing the relevant final states, to that of the anti-kT algorithm. Finally, we show that the results for spectral clustering are obtained without any change in the parameter settings of the algorithm, unlike the anti-kT case, which requires the cone size to be adjusted to the physics process under study.