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Original Articles

Distance-based approach in univariate longitudinal data analysis

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Pages 674-692 | Received 16 Feb 2012, Accepted 14 Nov 2012, Published online: 02 Jan 2013
 

Abstract

In this paper, we propose a methodology to analyze longitudinal data through distances between pairs of observations (or individuals) with regard to the explanatory variables used to fit continuous response variables. Restricted maximum-likelihood and generalized least squares are used to estimate the parameters in the model. We applied this new approach to study the effect of gender and exposure on the deviant behavior variable with respect to tolerance for a group of youths studied over a period of 5 years. Were performed simulations where we compared our distance-based method with classic longitudinal analysis with both AREquation(1) and compound symmetry correlation structures. We compared them under Akaike and Bayesian information criterions, and the relative efficiency of the generalized variance of the errors of each model. We found small gains in the proposed model fit with regard to the classical methodology, particularly in small samples, regardless of variance, correlation, autocorrelation structure and number of time measurements.

Acknowledgements

Work partially supported by Carolina Foundation, and Applied Statistics in Experimental Research, Industry and Biotechnology (National University of Colombia).

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