Introduction to neural networks in high energy physics
Artificial neural networks are a well established tool in high energy physics, playing an important role in both online and offline data analysis. Nevertheless they are often perceived as black boxes which perform obscure operations beyond the control of the user, resulting in a skepticism against a...
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2013-07-01
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Online Access: | http://dx.doi.org/10.1051/epjconf/20135502003 |
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doaj-84595f09549948e1a083f3701f16a89b2021-08-02T09:54:39ZengEDP SciencesEPJ Web of Conferences2100-014X2013-07-01550200310.1051/epjconf/20135502003Introduction to neural networks in high energy physicsTherhaag JanArtificial neural networks are a well established tool in high energy physics, playing an important role in both online and offline data analysis. Nevertheless they are often perceived as black boxes which perform obscure operations beyond the control of the user, resulting in a skepticism against any results that may be obtained using them. The situation is not helped by common explanations which try to draw analogies between artificial neural networks and the human brain, for the brain is an even more complex black box itself. In this introductory text, I will take a problem-oriented approach to neural network techniques, showing how the fundamental concepts arise naturally from the demand to solve classification tasks which are frequently encountered in high energy physics. Particular attention is devoted to the question how probability theory can be used to control the complexity of neural networks. http://dx.doi.org/10.1051/epjconf/20135502003 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Therhaag Jan |
spellingShingle |
Therhaag Jan Introduction to neural networks in high energy physics EPJ Web of Conferences |
author_facet |
Therhaag Jan |
author_sort |
Therhaag Jan |
title |
Introduction to neural networks in high energy physics |
title_short |
Introduction to neural networks in high energy physics |
title_full |
Introduction to neural networks in high energy physics |
title_fullStr |
Introduction to neural networks in high energy physics |
title_full_unstemmed |
Introduction to neural networks in high energy physics |
title_sort |
introduction to neural networks in high energy physics |
publisher |
EDP Sciences |
series |
EPJ Web of Conferences |
issn |
2100-014X |
publishDate |
2013-07-01 |
description |
Artificial neural networks are a well established tool in high energy physics, playing an important role in both online and offline data analysis. Nevertheless they are often perceived as black boxes which perform obscure operations beyond the control of the user, resulting in a skepticism against any results that may be obtained using them. The situation is not helped by common explanations which try to draw analogies between artificial neural networks and the human brain, for the brain is an even more complex black box itself. In this introductory text, I will take a problem-oriented approach to neural network techniques, showing how the fundamental concepts arise naturally from the demand to solve classification tasks which are frequently encountered in high energy physics. Particular attention is devoted to the question how probability theory can be used to control the complexity of neural networks. |
url |
http://dx.doi.org/10.1051/epjconf/20135502003 |
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AT therhaagjan introductiontoneuralnetworksinhighenergyphysics |
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