Asymptotic Normality in Density Support Estimation
نویسندگان
چکیده
Estimation Gérard BIAU a,∗, Benôıt CADRE b, David M. MASON c and Bruno PELLETIER d a LSTA & LPMA Université Pierre et Marie Curie – Paris VI Bôıte 158, 175 rue du Chevaleret 75013 Paris, France [email protected] b IRMAR, ENS Cachan Bretagne, CNRS, UEB Campus de Ker Lann Avenue Robert Schuman 35170 Bruz, France [email protected] c University of Delaware Food and Resource Economics 206 Townsend Hall Newark, DE 19717, USA [email protected] c IRMAR, Université Rennes 2, CNRS, UEB Campus Villejean Place du Recteur Henri Le Moal, CS 24307 35043 Rennes Cedex, France [email protected]
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تاریخ انتشار 2009