In this paper, the maximum Lq-likelihood estimator (MLqE), a new parameter estimator based on nonextensive entropy [Kibernetika 3 (1967) 30–35] is introduced. The properties of the MLqE are studied via asymptotic analysis and computer simulations. The behavior of the MLqE is characterized by the degree of distortion q applied to the assumed model. When q is properly chosen for small and moderate sample sizes, the MLqE can successfully trade bias for precision, resulting in a substantial reduction of the mean squared error. When the sample size is large and q tends to 1, a necessary and sufficient condition to ensure a proper asymptotic normality and efficiency of MLqE is established.

Maximum Lq-Likelihood Method / Ferrari, Davide; Y., Yang. - In: ANNALS OF STATISTICS. - ISSN 0090-5364. - STAMPA. - 38:(2010), pp. 573-583.

Maximum Lq-Likelihood Method

FERRARI, Davide;
2010

Abstract

In this paper, the maximum Lq-likelihood estimator (MLqE), a new parameter estimator based on nonextensive entropy [Kibernetika 3 (1967) 30–35] is introduced. The properties of the MLqE are studied via asymptotic analysis and computer simulations. The behavior of the MLqE is characterized by the degree of distortion q applied to the assumed model. When q is properly chosen for small and moderate sample sizes, the MLqE can successfully trade bias for precision, resulting in a substantial reduction of the mean squared error. When the sample size is large and q tends to 1, a necessary and sufficient condition to ensure a proper asymptotic normality and efficiency of MLqE is established.
2010
38
573
583
Maximum Lq-Likelihood Method / Ferrari, Davide; Y., Yang. - In: ANNALS OF STATISTICS. - ISSN 0090-5364. - STAMPA. - 38:(2010), pp. 573-583.
Ferrari, Davide; Y., Yang
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/640648
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