The European Physical Journal C • Vol 83 • No 7
Parton labeling without matching: unveiling emergent labelling capabilities in regression models
July 2023 • Shikai Qiu, S. Han, X. Ju, Benjamin Nachman, Haichen Wang
Abstract Parton labeling methods are widely used when reconstructing collider events with top quarks or other massive particles. State-of-the-art techniques are based on machine learning and require training data with events that have been matched using simulations with truth information. In nature, there is no unique matching between partons and final state objects due to the properties of the strong force and due to acceptance effects. We propose a new approach to parton labeling that circumvents these challenge…