Multiplicative Local Linear Hazard Estimation and Best One-Sided Cross-Validation
Abstract
This paper develops detailed mathematical statistical theory of a new class of cross-validation techniques of local linear kernel hazards and their multiplicative bias corrections. The new class of cross-validation combines principles of local information and recent advances in indirect cross-validation. A few applications of cross-validating multiplicative kernel hazard estimation do exist in the literature. However, detailed mathematical statistical theory and small sample performance are introduced via this paper and further upgraded to our new class of best one-sided cross-validation. Best one-sided cross-validation turns out to have excellent performance in its practical illustrations, in its small sample performance and in its mathematical statistical theoretical performance.
Cite
Text
Gámiz et al. "Multiplicative Local Linear Hazard Estimation and Best One-Sided Cross-Validation." Journal of Machine Learning Research, 2019.Markdown
[Gámiz et al. "Multiplicative Local Linear Hazard Estimation and Best One-Sided Cross-Validation." Journal of Machine Learning Research, 2019.](https://mlanthology.org/jmlr/2019/gamiz2019jmlr-multiplicative/)BibTeX
@article{gamiz2019jmlr-multiplicative,
title = {{Multiplicative Local Linear Hazard Estimation and Best One-Sided Cross-Validation}},
author = {Gámiz, Maria Luz and Martínez-Miranda, María Dolores and Nielsen, Jens Perch},
journal = {Journal of Machine Learning Research},
year = {2019},
pages = {1-29},
volume = {20},
url = {https://mlanthology.org/jmlr/2019/gamiz2019jmlr-multiplicative/}
}