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2016 | 17 | 3 | 449-466
Article title

An Extension of the Classical Distance Correlation Coefficient for Multivariate Functional Data with Applications

Content
Title variants
Languages of publication
EN
Abstracts
EN
The relationship between two sets of real variables defined for the same individuals can be evaluated by a few different correlation coefficients. For the functional data we have one important tool: canonical correlations. It is not immediately straightforward to extend other similar measures to the context of functional data analysis. In this work we show how to use the distance correlation coefficient for a multivariate functional case. The approaches discussed are illustrated with an application to some socio-economic data.
Year
Volume
17
Issue
3
Pages
449-466
Physical description
Contributors
  • Adam Mickiewicz University
References
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Document Type
Publication order reference
Identifiers
YADDA identifier
bwmeta1.element.desklight-1706d246-8973-4d58-bd4f-cc017ecbb3ca
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