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Recursive approximation of the high dimensional max function

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Author Info
S.I. Birbil ()
S.-C. Fang
J.B.G. Frenk ()
S. Zhang (FEW-Econometrie en besliskunde)
Abstract

An alternative smoothing method for the high dimensional max function has been studied. The proposed method is a recursive extension of the two dimensional smoothing functions. In order to analyze the proposed method, a theoretical framework related to smoothing methods has been discussed. Moreover, we support our discussion by considering some application areas. This is followed by a comparison with an alternative well-known smoothing method.

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File URL: http://www.eur.nl/WebDOC/doc/econometrie/feweco20030217144831.pdf
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Publisher Info
Paper provided by Erasmus University Rotterdam, Econometric Institute in its series Econometric Institute Report with number 304.

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Date of creation: 2003
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Handle: RePEc:dgr:eureir:2003304

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Related research
Keywords: Smoothing methods n dimensional max function Recursive approximation VLCP;

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