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Statistical Expectation of High Energy Physics Data Sets Separation Algorithms
- 1.0421461 - ÚI 2014 RIV CZ eng C - Conference Paper (international conference)
Hakl, František
Statistical Expectation of High Energy Physics Data Sets Separation Algorithms.
Stochastic and Physical Monitoring Systems 2013. Praha: ČVUT Praha Fakulta jaderná a fyzikálně inženýrská, 2013 - (Hobza, T.), s. 37-46. ISBN 978-80-01-05383-6.
[SPMS 2013. Nebřich (CZ), 24.06.2013-29.06.2013]
R&D Projects: GA MŠMT(CZ) LG12020
Institutional support: RVO:67985807
Keywords : Probably Approximately Correct Learning * Refutability * HEP data separation * Neural networks * Decision trees * VC-dimension
Subject RIV: BB - Applied Statistics, Operational Research
Article focuses on the application of the basic results of the statistical learning theory known as Probabilistic Approximately Correct learning in the evaluation and post-processing of unique physical data obtained from the detectors of particle accelerators. The aim of this article is not direct separation of the measured data but evaluation of the appropriateness of separation methods used. The main principles and results of the PAC learning theory are briefly summarized, the main characteristics of selected multivariable data separation algorithms are studied from the VC-dimension point of view. Finally, based on actual data sets obtained from Tevatron D$\emptyset$ experiment, some practical hints for separation method selection and numerical computation are derived.
Permanent Link: http://hdl.handle.net/11104/0227782
Number of the records: 1