This paper proposes a new class of estimators of an unknown entropy of random vector. Its asymptotic unbiasedness and consistency are proved. Further, this class of estimators is used to build both goodness-of-fit and independence tests based on sample entropy. A simulation study indicates that the test involving the proposed entropy estimate has higher power than other well-known competitors under heavy tailed alternatives which are frequently used in many financial applications.

A new class of random vector entropy estimators and its applications in statistical hypotheses / Novi Inverardi, Pier Luigi; Goria, Mohammed Nawaz; N., Leonenko; V., Mergel. - In: JOURNAL OF NONPARAMETRIC STATISTICS. - ISSN 1048-5252. - STAMPA. - 17:3(2005), pp. 277-297.

A new class of random vector entropy estimators and its applications in statistical hypotheses

Novi Inverardi, Pier Luigi;Goria, Mohammed Nawaz;
2005-01-01

Abstract

This paper proposes a new class of estimators of an unknown entropy of random vector. Its asymptotic unbiasedness and consistency are proved. Further, this class of estimators is used to build both goodness-of-fit and independence tests based on sample entropy. A simulation study indicates that the test involving the proposed entropy estimate has higher power than other well-known competitors under heavy tailed alternatives which are frequently used in many financial applications.
2005
3
Novi Inverardi, Pier Luigi; Goria, Mohammed Nawaz; N., Leonenko; V., Mergel
A new class of random vector entropy estimators and its applications in statistical hypotheses / Novi Inverardi, Pier Luigi; Goria, Mohammed Nawaz; N., Leonenko; V., Mergel. - In: JOURNAL OF NONPARAMETRIC STATISTICS. - ISSN 1048-5252. - STAMPA. - 17:3(2005), pp. 277-297.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/41167
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