Punzi-loss:

F. Abudinén, M. Bertemes,S. Bilokin,M. Campajola,G. Casarosa,S. Cunliffe,L. Corona,M. De Nuccio,G. De Pietro,S. Dey,M. Eliachevitch,P. Feichtinger,T. Ferber, J. Gemmler, P. Goldenzweig, A. Gottmann,E. Graziani, H. Haigh,M. Hohmann,T. Humair,G. Inguglia,J. Kahn,T. Keck,I. Komarov, J.-F. Krohn, T. Kuhr,S. Lacaprara, K. Lieret,R. Maiti,A. Martini, F. Meier, F. Metzner,M. Milesi,S.-H. Park,M. Prim, C. Pulvermacher,M. Ritter, Y. Sato, C. Schwanda, W. Sutcliffe,U. Tamponi,F. Tenchini, P. Urquijo,L. Zani, R. Žlebčík, A. Zupanc

EUROPEAN PHYSICAL JOURNAL C(2022)

引用 1|浏览22
暂无评分
摘要
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.
更多
查看译文
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要