Bandwidth selection for kernel density estimation with length-biased data

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Taylor & Francis
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Abstract

Length-biased data are a particular case of weighted data, which arise in many situations: biomedicine, quality control or epidemiology among others. In this paper we study the theoretical properties of kernel density estimation in the context of length-biased data, proposing two consistent bootstrap methods that we use for bandwidth selection. Apart from the bootstrap bandwidth selectors we suggest a rule-of-thumb. These bandwidth selection proposals are compared with a least-squares cross-validation method. A simulation study is accomplished to understand the behaviour of the procedures in finite samples

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This is an Accepted Manuscript of an article published by Taylor & Francis in Journal of Nonparametric Statistics on 23 Jun 2017, available online: https://doi.org/10.1080/10485252.2017.1339309.

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Borrajo, M. I., González-Manteiga, W., & Martínez-Miranda, M. D. (2017). Bandwidth selection for kernel density estimation with length-biased data. Journal of Nonparametric Statistics, 29(3), 636-668.

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The authors acknowledge the support fromthe SpanishMinistry of Economy and Competitiveness, through grant number MTM2013-41383P, which includes support from the European Regional Development Fund (ERDF). Support from the IAP network StUDyS (P7/06) from Belgian Science Policy, is also acknowledged. M.I. Borrajo has been supported by FPU (FPU2013/00473) from the Spanish Ministry of Education

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