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Bayesian bandwidth estimation for a nonparametric functional regression model with unknown error density

Bayesian bandwidth estimation for a nonparametric functional regression model with unknown error density
Bayesian bandwidth estimation for a nonparametric functional regression model with unknown error density
functional nadaraya-watson estimator, kernel density estimation, markov chain monte carlo, mixture error density, spectroscopy
0167-9473
Shang, Han Lin
1625ecc8-1ab1-4ef8-b87e-e5a2382d34c5
Shang, Han Lin
1625ecc8-1ab1-4ef8-b87e-e5a2382d34c5

Shang, Han Lin (2013) Bayesian bandwidth estimation for a nonparametric functional regression model with unknown error density. Computational Statistics & Data Analysis. (In Press)

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Accepted/In Press date: 10 May 2013
Keywords: functional nadaraya-watson estimator, kernel density estimation, markov chain monte carlo, mixture error density, spectroscopy
Organisations: Social Statistics & Demography

Identifiers

Local EPrints ID: 352352
URI: http://eprints.soton.ac.uk/id/eprint/352352
ISSN: 0167-9473
PURE UUID: 9faf43d4-806d-4b02-9c81-3a1ed8142227

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Date deposited: 10 May 2013 12:26
Last modified: 07 Apr 2020 16:33

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Author: Han Lin Shang

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