Automated Hyperparameter Optimization of Neural Networks for ATLAS analyses
Research output: Contribution to conferences › Presentation slides › Contributed
Contributors
Abstract
In recent years, artificial neural networks have become a standard tool in many analyses to increase the sensitivity of measurements and largely replaced other multivariate techniques. The hyperparameters of the neural network, e. g. the number of hidden layers in a multilayer perceptron, are however usually chosen based on intuition and experience without any optimization. Additionally, the absence of overtraining is often only verified by visually inspecting the network’s output distributions.
In this talk, a framework to perform automated hyperparameter optimization with a special focus on directly including objective overtraining conditions as part of the optimization is presented. Furthermore, its first application in the ATLAS vector boson polarization analysis of W±W± scattering is discussed.
In this talk, a framework to perform automated hyperparameter optimization with a special focus on directly including objective overtraining conditions as part of the optimization is presented. Furthermore, its first application in the ATLAS vector boson polarization analysis of W±W± scattering is discussed.
Details
Symposium
| Title | 86. Jahrestagung der DPG und DPG-Frühjahrstagung der Sektion Materie und Kosmos (SMuK) 2023 |
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| Abbreviated title | SMuK 2023 |
| Duration | 20 - 24 March 2023 |
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| Degree of recognition | National event |
| Location | Technische Universität Dresden |
| City | Dresden |
| Country | Germany |
External IDs
| ORCID | /0009-0005-5576-327X/work/187999923 |
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