- Autor
- Górecki Tomasz (Adam Mickiewicz University in Poznań, Poland), Krzyśko Mirosław (Adam Mickiewicz University in Poznań, Poland), Wołyński Waldemar (Adam Mickiewicz University in Poznań, Poland)
- Tytuł
- Classification Problems Based on Regression Models for Multi-Dimensional Functional Data
- Źródło
- Statistics in Transition, 2015, vol. 16, nr 1, s. 97-110, rys., tab., bibliogr. s. 108-110
- Słowa kluczowe
- Klasyfikacja, Modele regresji
Classification, Regression models - Uwagi
- summ.
Materiały z konferencji Multivariate Statistical Analysis 2014, Łódź. - Abstrakt
- Data in the form of a continuous vector function on a given interval are referred to as multivariate functional data. These data are treated as realizations of multivariate random processes. We use multivariate functional regression techniques for the classification of multivariate functional data. The approaches discussed are illustrated with an application to two real data sets. (original abstract)
- Dostępne w
- Biblioteka Główna Uniwersytetu Ekonomicznego w Krakowie
Biblioteka SGH im. Profesora Andrzeja Grodka
Biblioteka Główna Uniwersytetu Ekonomicznego w Katowicach - Pełny tekst
- Pokaż
- Bibliografia
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- Cytowane przez
- ISSN
- 1234-7655
- Język
- eng