HEP event selection is traditionally considered a binary classification problem, involving the dichotomous categories of signal and background. In distribution fits for particle masses or couplings, however, signal events are not all equivalent, as the signal differential cross section has different sensitivities to the measured parameter in different regions of phase space. In this paper, I describe a mathematical framework for the evaluation and optimization of HEP parameter fits, where this sensitivity is defined on an event-by-event basis, and for MC events it is modeled in terms of their MC weight derivatives with respect to the measured parameter. Minimising the statistical error on a measurement implies the need to resolve (i.e. sepa...
Datasets in modern High Energy Physics (HEP) experiments are often described by dozens or even hundr...
The particle track reconstruction is one of the most important part of the full event reconstruction...
Information of interest can often only be extracted from data by model fitting. When the functional ...
HEP event selection is traditionally considered a binary classification problem, involving the dicho...
HEP event selection is traditionally considered a binary classification problem, involving the dicho...
I discuss the choice of evaluation metrics for binary classifiers in High Energy Physics (HEP) event...
Most physics results at the LHC end in a likelihood ratio test. This includes discovery and exclusio...
<p>Presentation at the 23rd International Conference on Computing in High-Energy and Nuclear Physics...
Modern analysis of HEP data needs advanced statistical tools to separate signal from background. Thi...
This concise set of course-based notes provides the reader with the main concepts and tools needed t...
The parameters in Monte Carlo (MC) event generators are tuned on experimental measurements by evalua...
In experimental particle physics, researchers must often construct a mathematical model of the exper...
<p><b>a</b>, Schematic representation of a sector of a four-layers tracking detector, with simulated...
The optimisation (tuning) of the free parameters of Monte Carlo event generators by comparing their ...
The Histogram Probabilistic Multi-Hypothesis Tracker (H-PMHT) is a parametric mixture-fitting approa...
Datasets in modern High Energy Physics (HEP) experiments are often described by dozens or even hundr...
The particle track reconstruction is one of the most important part of the full event reconstruction...
Information of interest can often only be extracted from data by model fitting. When the functional ...
HEP event selection is traditionally considered a binary classification problem, involving the dicho...
HEP event selection is traditionally considered a binary classification problem, involving the dicho...
I discuss the choice of evaluation metrics for binary classifiers in High Energy Physics (HEP) event...
Most physics results at the LHC end in a likelihood ratio test. This includes discovery and exclusio...
<p>Presentation at the 23rd International Conference on Computing in High-Energy and Nuclear Physics...
Modern analysis of HEP data needs advanced statistical tools to separate signal from background. Thi...
This concise set of course-based notes provides the reader with the main concepts and tools needed t...
The parameters in Monte Carlo (MC) event generators are tuned on experimental measurements by evalua...
In experimental particle physics, researchers must often construct a mathematical model of the exper...
<p><b>a</b>, Schematic representation of a sector of a four-layers tracking detector, with simulated...
The optimisation (tuning) of the free parameters of Monte Carlo event generators by comparing their ...
The Histogram Probabilistic Multi-Hypothesis Tracker (H-PMHT) is a parametric mixture-fitting approa...
Datasets in modern High Energy Physics (HEP) experiments are often described by dozens or even hundr...
The particle track reconstruction is one of the most important part of the full event reconstruction...
Information of interest can often only be extracted from data by model fitting. When the functional ...