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Skewness by Splitting the Scale Parameter
Authors:Ingo Klein
Institution:Department of Statistics and Econometrics , University of Erlangen-Nürnberg , Nürnberg , Germany
Abstract:This article describes a recursive nonparametric estimation for the local partial first derivative of an arbitrary function satisfied some regularity conditions and establishes its consistency and asymptotic normality under the assumption of strong mixing sequence. The proposed estimator is a variable window width version of the Watson-Nadaraya type of derivative estimator. The window width varied as more data points become available enables a recursive algorithm that reduce computational complexity from order N 3 normally required by batch methods for kernel regression to order N 2. This approach is computationally simple and attractive from practical viewpoint especially when the situation call for frequent updating of first derivative estimates. For example, maintaining a delta-hedged position of a portfolio of equities with index options is one of many applications of such estimation.
Keywords:Score function  Skewness  Skewness ordering  Skewness to the right
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