Mean likelihood estimators
Abstract
The use of {\it Mathematica} in deriving mean likelihood estimators is discussed. Comparisons between the maximum likelihood estimator, the mean likelihood estimator and the Bayes estimate based on a Jeffrey's noninformative prior using the criteria mean-square error and Pitman measure of closeness. Based on these criteria we find that for the first-order moving-average time series model, the mean likelihood estimator outperforms the maximum likelihood estimator and the Bayes estimator with a Jeffrey's noninformative prior. {\it Mathematica} was used for symbolic and numeric computations as well as for the graphical display of results. A {\it Mathematica} notebook is available which provides supplementary derivations and code from http://www.stats.uwo.ca/mcleod/epubs/mele The interested reader can easily reproduce or extend any of the results in this paper using this supplement.
Cite
@article{arxiv.1611.00884,
title = {Mean likelihood estimators},
author = {Ian McLeod and Benoit Quenneville},
journal= {arXiv preprint arXiv:1611.00884},
year = {2016}
}
Comments
29 page, 10 figures