Most measurements in particle and nuclear physics use matrix-based unfolding algorithms to correct for detector effects. In nearly all cases, the observable is defined analogously at the particle and detector level. We point out that while the particle-level observable needs to be physically motivated to link with theory, the detector-level need not be and can be optimized. We show that using deep learning to define detector-level observables has the capability to improve the measurement when combined with standard unfolding methods.Comment: This is the version that was published on July 5, 202
We introduce a novel method for identifying the mass composition of ultra-high-energy cosmic rays us...
Machine-learning techniques have become fundamental in high-energy physics and, for new physics sear...
Discriminating between quark- and gluon-initiated jets has long been a central focus of jet substruc...
Abstract Most measurements in particle and nuclear physics use matrix-based unfoldi...
Many analyses in particle and nuclear physics use simulations to infer fundamental, effective, or ph...
Unfolding is an important procedure in particle physics experiments which corrects for detector effe...
Unfolding is an ill-posed inverse problem in particle physics aiming to infer a true particle-level ...
In many scientific fields which rely on statistical inference, simulations are often used to map fro...
Collider data must be corrected for detector effects ("unfolded") to be compared with many theoretic...
In the collider phenomenology of extensions of the Standard Model with partner particles, cascade de...
Machine learning-based unfolding has enabled unbinned and high-dimensional differential cross sectio...
Anomaly detection with convolutional autoencoders is a popular method to search for new physics in a...
Advances in machine learning methods provide tools that have broad applicability in scientific resea...
Axion-like particles (ALPs) that decay into photon pairs pose a challenge for experiments that rely ...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
We introduce a novel method for identifying the mass composition of ultra-high-energy cosmic rays us...
Machine-learning techniques have become fundamental in high-energy physics and, for new physics sear...
Discriminating between quark- and gluon-initiated jets has long been a central focus of jet substruc...
Abstract Most measurements in particle and nuclear physics use matrix-based unfoldi...
Many analyses in particle and nuclear physics use simulations to infer fundamental, effective, or ph...
Unfolding is an important procedure in particle physics experiments which corrects for detector effe...
Unfolding is an ill-posed inverse problem in particle physics aiming to infer a true particle-level ...
In many scientific fields which rely on statistical inference, simulations are often used to map fro...
Collider data must be corrected for detector effects ("unfolded") to be compared with many theoretic...
In the collider phenomenology of extensions of the Standard Model with partner particles, cascade de...
Machine learning-based unfolding has enabled unbinned and high-dimensional differential cross sectio...
Anomaly detection with convolutional autoencoders is a popular method to search for new physics in a...
Advances in machine learning methods provide tools that have broad applicability in scientific resea...
Axion-like particles (ALPs) that decay into photon pairs pose a challenge for experiments that rely ...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
We introduce a novel method for identifying the mass composition of ultra-high-energy cosmic rays us...
Machine-learning techniques have become fundamental in high-energy physics and, for new physics sear...
Discriminating between quark- and gluon-initiated jets has long been a central focus of jet substruc...