Saved in:
Bibliographic Details
Main Authors: Alvarez, Ezequiel, Da Rold, Leandro, Szewc, Manuel, Szynkman, Alejandro, Tanco, Santiago A., Tarutina, Tatiana
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.08001
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916410432684032
author Alvarez, Ezequiel
Da Rold, Leandro
Szewc, Manuel
Szynkman, Alejandro
Tanco, Santiago A.
Tarutina, Tatiana
author_facet Alvarez, Ezequiel
Da Rold, Leandro
Szewc, Manuel
Szynkman, Alejandro
Tanco, Santiago A.
Tarutina, Tatiana
contents To find New Physics or to refine our knowledge of the Standard Model at the LHC is an enterprise that involves many factors. We focus on taking advantage of available information and pour our effort in re-thinking the usual data-driven ABCD method to improve it and to generalize it using Bayesian Machine Learning tools. We propose that a dataset consisting of a signal and many backgrounds is well described through a mixture model. Signal, backgrounds and their relative fractions in the sample can be well extracted by exploiting the prior knowledge and the dependence between the different observables at the event-by-event level with Bayesian tools. We show how, in contrast to the ABCD method, one can take advantage of understanding some properties of the different backgrounds and of having more than two independent observables to measure in each event. In addition, instead of regions defined through hard cuts, the Bayesian framework uses the information of continuous distribution to obtain soft-assignments of the events which are statistically more robust. To compare both methods we use a toy problem inspired by $pp\to hh\to b\bar b b \bar b$, selecting a reduced and simplified number of processes and analysing the flavor of the four jets and the invariant mass of the jet-pairs, modeled with simplified distributions. Taking advantage of all this information, and starting from a combination of biased and agnostic priors, leads us to a very good posterior once we use the Bayesian framework to exploit the data and the mutual information of the observables at the event-by-event level. We show how, in this simplified model, the Bayesian framework outperforms the ABCD method sensitivity in obtaining the signal fraction in scenarios with $1\%$ and $0.5\%$ true signal fractions in the dataset. We also show that the method is robust against the absence of signal.
format Preprint
id arxiv_https___arxiv_org_abs_2402_08001
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Improvement and generalization of ABCD method with Bayesian inference
Alvarez, Ezequiel
Da Rold, Leandro
Szewc, Manuel
Szynkman, Alejandro
Tanco, Santiago A.
Tarutina, Tatiana
High Energy Physics - Phenomenology
Machine Learning
High Energy Physics - Experiment
To find New Physics or to refine our knowledge of the Standard Model at the LHC is an enterprise that involves many factors. We focus on taking advantage of available information and pour our effort in re-thinking the usual data-driven ABCD method to improve it and to generalize it using Bayesian Machine Learning tools. We propose that a dataset consisting of a signal and many backgrounds is well described through a mixture model. Signal, backgrounds and their relative fractions in the sample can be well extracted by exploiting the prior knowledge and the dependence between the different observables at the event-by-event level with Bayesian tools. We show how, in contrast to the ABCD method, one can take advantage of understanding some properties of the different backgrounds and of having more than two independent observables to measure in each event. In addition, instead of regions defined through hard cuts, the Bayesian framework uses the information of continuous distribution to obtain soft-assignments of the events which are statistically more robust. To compare both methods we use a toy problem inspired by $pp\to hh\to b\bar b b \bar b$, selecting a reduced and simplified number of processes and analysing the flavor of the four jets and the invariant mass of the jet-pairs, modeled with simplified distributions. Taking advantage of all this information, and starting from a combination of biased and agnostic priors, leads us to a very good posterior once we use the Bayesian framework to exploit the data and the mutual information of the observables at the event-by-event level. We show how, in this simplified model, the Bayesian framework outperforms the ABCD method sensitivity in obtaining the signal fraction in scenarios with $1\%$ and $0.5\%$ true signal fractions in the dataset. We also show that the method is robust against the absence of signal.
title Improvement and generalization of ABCD method with Bayesian inference
topic High Energy Physics - Phenomenology
Machine Learning
High Energy Physics - Experiment
url https://arxiv.org/abs/2402.08001