We present the novel implementation of a non-differentiable metric approximation and a corresponding loss-scheduling aimed at the search for new particles of unknown mass in high energy physics experiments. We call the loss-scheduling, based on the minimisation of a figure-of-merit related function typical of particle physics, a Punzi-loss function, and the neural network that utilises this loss function a Punzi-net. We show that the Punzi-net outperforms standard multivariate analysis techniques and generalises well to mass hypotheses for which it was not trained. This is achieved by training a single classifier that provides a coherent and optimal classification of all signal hypotheses over the whole search space. Our result constitutes a complementary approach to fully differentiable analyses in particle physics. We implemented this work using PyTorch and provide users full access to a public repository containing all the codes and a training example.

Punzi-loss:: a non-differentiable metric approximation for sensitivity optimisation in the search for new particles / Abudinen, F., Bertemes, M., Bilokin, S., Campajola, M., Casarosa, G., Cunliffe, S., Corona, L., De Nuccio, M., De Pietro, G., Dey, S., Eliachevitch, M., Feichtinger, P., Ferber, T., Gemmler, J., Goldenzweig, P., Gottmann, A., Graziani, E., Haigh, H., Hohmann, M., Humair, T., et al.. - In: THE EUROPEAN PHYSICAL JOURNAL. C, PARTICLES AND FIELDS. - ISSN 1434-6044. - 82:2(2022). [10.1140/epjc/s10052-022-10070-0]

Punzi-loss:: a non-differentiable metric approximation for sensitivity optimisation in the search for new particles

Campajola M.;
2022

Abstract

We present the novel implementation of a non-differentiable metric approximation and a corresponding loss-scheduling aimed at the search for new particles of unknown mass in high energy physics experiments. We call the loss-scheduling, based on the minimisation of a figure-of-merit related function typical of particle physics, a Punzi-loss function, and the neural network that utilises this loss function a Punzi-net. We show that the Punzi-net outperforms standard multivariate analysis techniques and generalises well to mass hypotheses for which it was not trained. This is achieved by training a single classifier that provides a coherent and optimal classification of all signal hypotheses over the whole search space. Our result constitutes a complementary approach to fully differentiable analyses in particle physics. We implemented this work using PyTorch and provide users full access to a public repository containing all the codes and a training example.
2022
Punzi-loss:: a non-differentiable metric approximation for sensitivity optimisation in the search for new particles / Abudinen, F., Bertemes, M., Bilokin, S., Campajola, M., Casarosa, G., Cunliffe, S., Corona, L., De Nuccio, M., De Pietro, G., Dey, S., Eliachevitch, M., Feichtinger, P., Ferber, T., Gemmler, J., Goldenzweig, P., Gottmann, A., Graziani, E., Haigh, H., Hohmann, M., Humair, T., et al.. - In: THE EUROPEAN PHYSICAL JOURNAL. C, PARTICLES AND FIELDS. - ISSN 1434-6044. - 82:2(2022). [10.1140/epjc/s10052-022-10070-0]
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/968827
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 11
  • ???jsp.display-item.citation.isi??? 6
social impact