Tree-based methods refer to a class of predictive models largely employed in many scientific areas. Regression trees partition the variable space into a set of hyper-rectangles, and perform a prediction within each of them. Regression trees are conceptually simple, apparently easy to interpret and capable of dealing with non linearities and interactions. We propose a class of models here called semilinear regression tree, combining a linear component and a tree. These models can handle linear and non linear dependencies and maintains a good predictive performance, while ensuring a simple and intuitive interpretation in a generative model sense. Moreover, we propose an estimation procedure based on evolutionary algorithms.

Semilinear regression trees / Giulia Vannucci, Anna Gottard. - ELETTRONICO. - (2019), pp. 1125-1130. (Intervento presentato al convegno SIS 2019: Smart Statistics for Smart Applications tenutosi a Milano nel 18-21 giugno 2019).

Semilinear regression trees

Giulia Vannucci;Anna Gottard
2019

Abstract

Tree-based methods refer to a class of predictive models largely employed in many scientific areas. Regression trees partition the variable space into a set of hyper-rectangles, and perform a prediction within each of them. Regression trees are conceptually simple, apparently easy to interpret and capable of dealing with non linearities and interactions. We propose a class of models here called semilinear regression tree, combining a linear component and a tree. These models can handle linear and non linear dependencies and maintains a good predictive performance, while ensuring a simple and intuitive interpretation in a generative model sense. Moreover, we propose an estimation procedure based on evolutionary algorithms.
2019
Smart Statistics for Smart Applications Book of short papers SIS2019
SIS 2019: Smart Statistics for Smart Applications
Milano
18-21 giugno 2019
Giulia Vannucci, Anna Gottard
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1154661
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