2017
DOI: 10.13164/trends.2017.30.73
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Comparison of Neural Networks and Regression Time Series in Estimating the Development of the Afternoon Price of Palladium on the New York Stock Exchange

Abstract: Purpose of the article: Palladium is presently used for producing electronics, industrial products or jewellery, as well as products in the medical field. Its value is raised especially by its unique physical and chemical characteristics. Predicting the value of such a metal is not an easy matter (with regard to the fact that prices may change significantly in time). Methodology/methods: To carry out the analysis, London Fix Price PM data was used, i.e. amounts reported in the afternoon for a period longer tha… Show more

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Cited by 3 publications
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“…The principle of artificial intelligence is inspired by innate biological patterns. Vochozka [13] use for afterward regression neural structures and generate multilayer perceptron networks and neural networks of radial basis functions. Machová, Krulický and Horák [14] performed a regression analysis of the development of the afternoon gold price on the New York Stock Exchange using artificial neural networks and linear regression.…”
Section: Introductionmentioning
confidence: 99%
“…The principle of artificial intelligence is inspired by innate biological patterns. Vochozka [13] use for afterward regression neural structures and generate multilayer perceptron networks and neural networks of radial basis functions. Machová, Krulický and Horák [14] performed a regression analysis of the development of the afternoon gold price on the New York Stock Exchange using artificial neural networks and linear regression.…”
Section: Introductionmentioning
confidence: 99%