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Optimal simultaneous confidence bands in simple linear regression

Optimal simultaneous confidence bands in simple linear regression
Optimal simultaneous confidence bands in simple linear regression
A simultaneous confidence band provides useful information on the plausible range of an unknown regression model. For simple linear regression models, the most frequently quoted bands in the statistical literature include the hyperbolic band and the three-segment bands. One interesting question is whether one can construct confidence bands better than the hyperbolic and three-segment bands. The optimality criteria for confidence bands include the average width criterion considered by Gafarian (1964) and Naiman (1984) among others, and the minimum area confidence set (MACS) criterion of Liu and Hayter (2007). In this paper, two families of exact 1?? confidence bands, the inner-hyperbolic bands and the outer-hyperbolic bands, which include the hyperbolic and three-segment bands as special cases, are introduced in simple linear regression. Under the MACS criterion, the best confidence band within each family is found by numerical search and compared with the hyperbolic band, the best three-segment band and with each other. The methodologies are illustrated with a numerical example and the Matlab programs used are available upon request.
confidence set, linear regression, multiple comparison, simultaneous confidence bands
0378-3758
1225-1235
Liu, Wei
b64150aa-d935-4209-804d-24c1b97e024a
Ah-kine, Pascal
7c5dddd5-7892-4863-a0bf-b25bf9da172f
Liu, Wei
b64150aa-d935-4209-804d-24c1b97e024a
Ah-kine, Pascal
7c5dddd5-7892-4863-a0bf-b25bf9da172f

Liu, Wei and Ah-kine, Pascal (2010) Optimal simultaneous confidence bands in simple linear regression. Journal of Statistical Planning and Inference, 140 (5), 1225-1235. (doi:10.1016/j.jspi.2009.11.005).

Record type: Article

Abstract

A simultaneous confidence band provides useful information on the plausible range of an unknown regression model. For simple linear regression models, the most frequently quoted bands in the statistical literature include the hyperbolic band and the three-segment bands. One interesting question is whether one can construct confidence bands better than the hyperbolic and three-segment bands. The optimality criteria for confidence bands include the average width criterion considered by Gafarian (1964) and Naiman (1984) among others, and the minimum area confidence set (MACS) criterion of Liu and Hayter (2007). In this paper, two families of exact 1?? confidence bands, the inner-hyperbolic bands and the outer-hyperbolic bands, which include the hyperbolic and three-segment bands as special cases, are introduced in simple linear regression. Under the MACS criterion, the best confidence band within each family is found by numerical search and compared with the hyperbolic band, the best three-segment band and with each other. The methodologies are illustrated with a numerical example and the Matlab programs used are available upon request.

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More information

Published date: May 2010
Keywords: confidence set, linear regression, multiple comparison, simultaneous confidence bands
Organisations: Statistics

Identifiers

Local EPrints ID: 146021
URI: http://eprints.soton.ac.uk/id/eprint/146021
ISSN: 0378-3758
PURE UUID: 1322405a-be13-4049-ab60-7439ae23b131
ORCID for Wei Liu: ORCID iD orcid.org/0000-0002-4719-0345

Catalogue record

Date deposited: 20 Apr 2010 11:37
Last modified: 14 Mar 2024 02:35

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Contributors

Author: Wei Liu ORCID iD
Author: Pascal Ah-kine

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