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Nonparametric Lack-of-fit Tests for Parametric Mean-Regression Model with Censored Data
- Publication Year :
- 2007
-
Abstract
- We develop two kernel smoothing based tests of a parametric mean-regressionmodel against a nonparametric alternative when the response variable is right-censored. The new test statistics are inspired by the synthetic data and the weightedleast squares approaches for estimating the parameters of a (non)linear regressionmodel under censoring. The asymptotic critical values of our tests are given by thequantiles of the standard normal law. The tests are consistent against ¯xed alter-natives, local Pitman alternatives and uniformly over alternatives in HÄolder classesof functions of known regularity.
- Subjects :
- Statistics::Theory
Subjects
Details
- Database :
- OpenAIRE
- Accession number :
- edsair.od.......645..4d261e643032666b6e399c1b4d4d1b2c