Jet grooming through reinforcement learning
Carrazza, Stefano, Dreyer, Frédéric A.
We introduce a novel implementation of a reinforcement learning (RL) algorithm which is designed to find an optimal jet grooming strategy, a critical tool for collider experiments. The RL agent is trained with a reward function constructed to optimize the resulting jet properties, using both signal and background samples in a simultaneous multi-level training. We show that the grooming algorithm derived from the deep RL agent can match state-of-the-art techniques used at the Large Hadron Collider, resulting in improved mass resolution for boosted objects. Given a suitable reward function, the agent learns how to train a policy which optimally removes soft wide-angle radiation, allowing for a modular grooming technique that can be applied in a wide range of contexts. These results are accessible through the corresponding GroomRL framework.
Mar-22-2019
- Country:
- Europe
- Italy (0.14)
- United Kingdom (0.14)
- Europe
- Genre:
- Research Report > Promising Solution (0.34)
- Technology: