Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with respect to a set of predictor variables when the latter are many in number and/or collinear. This is done by extracting a limited number of components that simultaneously synthesize the predictor variables and predict the criterion ones. So far, no procedure has been offered for estimating statistical uncertainties of the obtained PCOVR parameter estimates. The present paper shows how this goal can be achieved, conditionally on the model specification, by means of the bootstrap approach. Four strategies for estimating bootstrap confidence intervals are derived and their statistical behaviour in terms of coverage is assessed by means of a simulation experiment. Such strategies are distinguished by the use of the varimax and quartimin procedures and by the use of Procrustes rotations of bootstrap solutions towards the sample solution. In general, the four strategies showed appropriate statistical behaviour, with coverage tending to the desired level for increasing sample sizes. The main exception involved strategies based on the quartimin procedure in cases characterized by complex underlying structures of the components. The appropriateness of the statistical behaviour was higher when the proper number of components were extracted.

Bootstrap confidence intervals for principal covariates regression / Giordani, P.; Kiers, H. A. L.. - In: BRITISH JOURNAL OF MATHEMATICAL & STATISTICAL PSYCHOLOGY. - ISSN 0007-1102. - 74:3(2021), pp. 541-566. [10.1111/bmsp.12238]

Bootstrap confidence intervals for principal covariates regression

Giordani P.;Kiers H. A. L.
2021

Abstract

Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with respect to a set of predictor variables when the latter are many in number and/or collinear. This is done by extracting a limited number of components that simultaneously synthesize the predictor variables and predict the criterion ones. So far, no procedure has been offered for estimating statistical uncertainties of the obtained PCOVR parameter estimates. The present paper shows how this goal can be achieved, conditionally on the model specification, by means of the bootstrap approach. Four strategies for estimating bootstrap confidence intervals are derived and their statistical behaviour in terms of coverage is assessed by means of a simulation experiment. Such strategies are distinguished by the use of the varimax and quartimin procedures and by the use of Procrustes rotations of bootstrap solutions towards the sample solution. In general, the four strategies showed appropriate statistical behaviour, with coverage tending to the desired level for increasing sample sizes. The main exception involved strategies based on the quartimin procedure in cases characterized by complex underlying structures of the components. The appropriateness of the statistical behaviour was higher when the proper number of components were extracted.
2021
bootstrap; confidence intervals; principal covariate regression
01 Pubblicazione su rivista::01a Articolo in rivista
Bootstrap confidence intervals for principal covariates regression / Giordani, P.; Kiers, H. A. L.. - In: BRITISH JOURNAL OF MATHEMATICAL & STATISTICAL PSYCHOLOGY. - ISSN 0007-1102. - 74:3(2021), pp. 541-566. [10.1111/bmsp.12238]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1559785
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