Regression for compositional data has been considered only from a parametric point of view. We introduce a nonparametric estimator for the regression function when both the response variable and the predictor can be defined on the simplex, and derive its asymptotic properties. To this end, we use the isometric log-ratio transformation along with properly defined kernel functions. The performances of our estimator are compared to those of a parametric model using a real data set.

Local regression for compositional data / Catia Venieri; Marco Di Marzio; Agnese Panzera. - ELETTRONICO. - (2013), pp. 177-184. (Intervento presentato al convegno 5th INTERNATIONAL WORKSHOP ON COMPOSITIONAL DATA ANALYSIS (CoDaWork 2013)).

Local regression for compositional data

PANZERA, AGNESE
2013

Abstract

Regression for compositional data has been considered only from a parametric point of view. We introduce a nonparametric estimator for the regression function when both the response variable and the predictor can be defined on the simplex, and derive its asymptotic properties. To this end, we use the isometric log-ratio transformation along with properly defined kernel functions. The performances of our estimator are compared to those of a parametric model using a real data set.
2013
PROCEEDINGS OF THE 5th INTERNATIONAL WORKSHOP ON COMPOSITIONAL DATA ANALYSIS CoDaWork 2013 June 3-7, 2013, Vorau, Austria FULL PAPERS
5th INTERNATIONAL WORKSHOP ON COMPOSITIONAL DATA ANALYSIS (CoDaWork 2013)
Catia Venieri; Marco Di Marzio; Agnese Panzera
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/822865
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