Title :
MLE’s Bias Pathology, Model Updated MLE, and Wallace’s Minimum Message Length Method
Author :
Yatracos, Yannis G.
Author_Institution :
Cyprus Univ. of Technol., Limassol, Cyprus
Abstract :
The inherent bias pathology of the maximum likelihood estimation method is confirmed for models with unknown parameters θ and ψ when maximum likelihood estimate (MLE) ψ̂ is function of MLE θ̂. To reduce ψ̂´s bias the likelihood equation to be solved for ψ is updated using the model for the data Y in it. For various models with ψ a shape parameter model updated (MU) MLE, ψ̂MU, reduces ψ̂´s bias. For the Pareto model ψ̂MU reduces in addition ψ̂´s variance. The results explain the difference that puzzled Fisher, between biased ψ̂ and the unbiased estimate he obtained for two models with the abandoned two-stage procedure used in MUMLE´s implementation. ψ̂MU is also obtained with the minimum message length method thus motivating the use of priors in frequentist inference.
Keywords :
Pareto analysis; maximum likelihood estimation; Fisher puzzling; MLE; MU; Pareto model; Wallace minimum message length method; frequentist inference; maximum likelihood estimation method; shape parameter model updating; Data models; Equations; Mathematical model; Maximum likelihood estimation; Pathology; Shape; Bias; Bias, Likelihood equations; Maximum likelihood; Minimum Message Length Method; Model Updated MLE; Specication problem; Two-stage MLE; likelihood equations; maximum likelihood; minimum message length method; model updated MLE; specification problem; two-stage MLE;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2014.2386329