Nonparametric estimation of location and scale parameters
Loading...
Date
Authors
Potgieter, C.J.
Lombard, F.
Researcher ID
Supervisors
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Record Identifier
Abstract
Two random variables X and Y belong to the same location-scale family if there are constants μ and σ such that Y and μ+σX have the same distribution. In this paper we consider non-parametric estimation of the parameters μ and σ under minimal assumptions regarding the form of the distribution functions of X and Y. We discuss an approach to the estimation problem that is based on asymptotic likelihood considerations. Our results enable us to provide a methodology that can be implemented easily and which yields estimators that are often near optimal when compared to fully parametric methods. We evaluate the performance of the estimators in a series of Monte Carlo simulations.
Sustainable Development Goals
Description
Citation
Potgieter, C.J. & Lombard, F. 2012. Nonparametric estimation of location and scale parameters. Computational statistics and data analysis, 56(12):4327-4337. [https://doi.org/10.1016/j.csda.2012.03.021]
