Maximum leave-one-out likelihood estimation for location parameter of unbounded densities
Thanakorn Nitithumbundit,
Jennifer S. K. Chan
Abstract:Maximum likelihood estimation of a location parameter fails when the density have unbounded mode. An alternative approach is considered by leaving out a data point to avoid the unbounded density in the full likelihood. This modification give rise to the leave-oneout likelihood. We propose an ECM algorithm which maximises the leave-one-out likelihood. It was shown that the estimator which maximises the leave-one-out likelihood is consistent and super-efficient. However, other asymptotic properties such as the o… Show more
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