(Machine) Learning amplitudes for faster event generation

Abstract

We propose to replace the exact amplitudes used in MC event generators for trained Machine Learning regressors, with the aim of speeding up the evaluation of slow amplitudes. As a proof of concept, we study the process gg ZZ whose LO amplitude is loop induced. We show that gradient boosting machines like XGBoost can predict the fully differential distributions with errors below 0.1 \%, and with prediction times O(103) faster than the evaluation of the exact function. This is achieved with training times 7 minutes and regressors of size 30~Mb. These results suggest a possible new avenue to speed up MC event generators.

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