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Novel approaches of data-mining in experimental physics

In: Tatra Mountains Mathematical Publications, vol. 51, no. 1
Gennadii A. Ososkov

Details:

Year, pages: 2012, 131 - 140
Keywords:
data mining, high energy physics, computer experiment, artificial neural network, boosted decision trees, growing neural gas
About article:
Data mining for processing experimental data in high energy and nuclear physics led to many multiparametric problems, two of them are considered: (i) hypothesis testing and classification approaches based on artificial neural networks and boosted decision trees (ii) clustering of large amounts of data by so-called growing neural gas. Some examples from the practice of the Joint Institute for Nuclear research are given to show how to prepare data to deal with those approaches.
How to cite:
ISO 690:
Ososkov, G. 2012. Novel approaches of data-mining in experimental physics. In Tatra Mountains Mathematical Publications, vol. 51, no.1, pp. 131-140. 1210-3195.

APA:
Ososkov, G. (2012). Novel approaches of data-mining in experimental physics. Tatra Mountains Mathematical Publications, 51(1), 131-140. 1210-3195.