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Boundary-adaptive kernel density estimation: the...
Journal article

Boundary-adaptive kernel density estimation: the case of (near) uniform density

Abstract

We consider nonparametric kernel estimation of density functions in the bounded-support setting having known support [a,b] using a boundary-adaptive kernel function and data-driven bandwidth selection, where a and b are finite and known prior to estimation. We observe, theoretically and in finite sample settings, that when bounds are known a priori this kernel approach is capable of outperforming even correctly specified parametric models, in the case of the uniform distribution. We demonstrate that this result has implications for modelling a range of densities other than the uniform case. Furthermore, when bounds [a,b] are unknown and the empirical support (i.e. [min(xi),max(xi)]) is used in their place, similar behaviour surfaces.

Authors

Racine JS; Li Q; Wang Q

Journal

Journal of Nonparametric Statistics, Vol. 36, No. 1, pp. 146–164

Publisher

Taylor & Francis

Publication Date

January 2, 2024

DOI

10.1080/10485252.2023.2250011

ISSN

1048-5252

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