Parameter Estimation using Neural Networks in the Presence of Detector
Effects
- URL: http://arxiv.org/abs/2010.03569v3
- Date: Wed, 7 Apr 2021 00:01:15 GMT
- Title: Parameter Estimation using Neural Networks in the Presence of Detector
Effects
- Authors: Anders Andreassen, Shih-Chieh Hsu, Benjamin Nachman, Natchanon
Suaysom, and Adi Suresh
- Abstract summary: Histogram-based template fits are the main technique used for estimating parameters of high energy physics Monte Carlo generators.
Parametrized neural network reweighting can be used to extend this fitting procedure to many dimensions and does not require binning.
We introduce a new two-level fitting approach that only requires one dataset with detector simulation and then a set of additional generation-level datasets without detector effects included.
- Score: 4.230838081898361
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Histogram-based template fits are the main technique used for estimating
parameters of high energy physics Monte Carlo generators. Parametrized neural
network reweighting can be used to extend this fitting procedure to many
dimensions and does not require binning. If the fit is to be performed using
reconstructed data, then expensive detector simulations must be used for
training the neural networks. We introduce a new two-level fitting approach
that only requires one dataset with detector simulation and then a set of
additional generation-level datasets without detector effects included. This
Simulation-level fit based on Reweighting Generator-level events with Neural
networks (SRGN) is demonstrated using simulated datasets for a variety of
examples including a simple Gaussian random variable, parton shower tuning, and
the top quark mass extraction.
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