Referierte Aufsätze Web of Science
Tereza Neocleous, Stephen Portnoy
In: Lifetime Data Analysis 15 (2009), 3, 357–378
Censored regression quantile (CRQ) methods provide a powerful and flexible approach to the analysis of censored survival data when standard linear models are felt to be appropriate. In many cases however, greater flexibility is desired to go beyond the usual multiple regression paradigm. One area of common interest is that of partially linear models: one (or more) of the explanatory covariates are assumed to act on the response through a non-linear function. Here the CRQ approach of Portnoy (J Am Stat Assoc 98:1001-1012, 2003) is extended to this partially linear setting. Basic consistency results are presented. A simulation experiment and unemployment example justify the value of the partially linear approach over methods based on the Cox proportional hazards model and on methods not permitting nonlinearity.
Themen: Arbeit und Beschäftigung
Keywords: quantile regression, partially linear models, b-spline, censored data, unemployment duration
Externer Link:
http://iriss.ceps.lu/documents/irisswp91.pdf
DOI:
https://doi.org/10.1007/s10985-009-9117-5