Expectile and quantile regression-David and Goliath?

2015 | journal article. A publication with affiliation to the University of Göttingen.

Jump to: Cite & Linked | Documents & Media | Details | Version history

Cite this publication

​Expectile and quantile regression-David and Goliath?​
Waltrup, L. S.; Sobotka, F.; Kneib, T.   & Kauermann, G.​ (2015) 
Statistical Modelling15(5) pp. 433​-456​.​ DOI: https://doi.org/10.1177/1471082X14561155 

Documents & Media

License

GRO License GRO License

Details

Authors
Waltrup, Linda Schulze; Sobotka, Fabian; Kneib, Thomas ; Kauermann, Göran
Abstract
Recent interest in modern regression modelling has focused on extending available ( mean) regression models by describing more general properties of the response distribution. An alternative approach is quantile regression where regression effects on the conditional quantile function of the response are assumed. While quantile regression can be seen as a generalization of median regression, expectiles as alternative are a generalized form of mean regression. Generally, quantiles provide a natural interpretation even beyond the 0.5 quantile, the median. A comparable simple interpretation is not available for expectiles beyond the 0.5 expectile, the mean. Nonetheless, expectiles have some interesting properties, some of which are discussed in this article. We contrast the two approaches and show how to get quantiles from a fine grid of expectiles. We compare such quantiles from expectiles with direct quantile estimates regarding efficiency. We also look at regression problems where both quantile and expectile curves have the undesirable property that neighbouring curves may cross each other. We propose a modified method to estimate non-crossing expectile curves based on splines. In an application, we look at the expected shortfall, a risk measure used in finance, which requires both expectiles and quantiles for estimation and which can be calculated easily with the proposed methods in the article.
Issue Date
2015
Journal
Statistical Modelling 
ISSN
1477-0342; 1471-082X
Language
English
Sponsor
German Research Foundation (DFG) [KA 1188/7-1]

Reference

Citations


Social Media