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Open AccessJournal ArticleDOI

On bandwidth choice for density estimation with dependent data

Peter Hall, +2 more
- 01 Dec 1995 - 
- Vol. 23, Iss: 6, pp 2241-2263
TLDR
In this paper, the authors address the empirical bandwidth choice problem in cases where the range of dependence may be virtually arbitrarily long and provide surprising evidence that, even for some strongly dependent data sequences, the asymptotically optimal bandwidth for independent data is a good choice.
Abstract
We address the empirical bandwidth choice problem in cases where the range of dependence may be virtually arbitrarily long. Assuming that the observed data derive from an unknown function of a Gaussian process, it is argued that, unlike more traditional contexts of statistical inference, in density estimation there is no clear role for the classical distinction between short- and long-range dependence. Indeed, the "boundaries" that separate different modes of behaviour for optimal bandwidths and mean squared errors are determined more by kernel order than by traditional notions of strength of dependence, for example, by whether or not the sum of the covariances converges. We provide surprising evidence that, even for some strongly dependent data sequences, the asymptotically optimal bandwidth for independent data is a good choice. A plug-in empirical bandwidth selector based on this observation is suggested. We determine the properties of this choice for a wide range of different strengths of dependence. Properties of cross-validation are also addressed.

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Citations
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Kernel density estimators of home range: smoothing and the autocorrelation red herring.

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A Review of Nonparametric Time Series Analysis

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Local polynomial regression on unknown manifolds

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Nonparametric analysis of univariate heavy-tailed data

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Is there a single best estimator? Selection of home range estimators using area-under-the-curve

TL;DR: Estimators of home range collected with GPS technology performed better than those estimated with VHF technology regardless of estimator used, and estimators that incorporate a temporal component appeared to be the most reliable regardless of whether kernel-based or Brownian bridge-based algorithms were used.
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