SIS 2018

Abstract

Modeling quantile regression coefficients functions permits describing the coefficients of a quantile regression model as parametric functions of the order of the quantile. This approach has numerous advantages over standard quantile regression, in which different quantiles are estimated one at the time, it facilitates estimation and inference, improves the interpretation of the results, and is statistically efficient. On the other hand, it poses new challenges in terms of model selection. We describe a penalized approach that can be used to identify a parsimonious model that can fit the data well. We describe the method, and analyze the dataset that motivated the present paper. The proposed approach is implemented in the qrcmNP package in R.

Date
Jun 20, 2018 — Jun 22, 2018
Location
University of Palermo
Palermo, Sicily
Gianluca Sottile
Gianluca Sottile
Research Fellow in Statistics
Doctor Europaeus

My research interests are related to the area of applied statistical learning, with particular focus on robust models.

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