Title of article :
Multiple Linear Regressions by Maximizing the Likelihood under Assumption of Generalized Gauss-Laplace Distribution of the Error
Author/Authors :
Jäntschi, Lorentz Department of Physics and Chemistry - Faculty of Materials and Environmental Engineering - Technical University of Cluj-Napoca - Muncii Boulevard - Cluj-Napoca, Romania , Bálint, Donatella Babes¸-Bolyai University - Kogalniceanu - Cluj-Napoca, Romania , Bolboacs, Sorana D Department of Medical Informatics and Biostatistics - Faculty of Medicine, Iuliu Hat¸ieganu University of Medicine and Pharmacy - Louis Pasteur - Cluj-Napoca, Romania
Abstract :
Multiple linear regression analysis is widely used to link an outcome with predictors for better understanding of the behaviour of
the outcome of interest. Usually, under the assumption that the errors follow a normal distribution, the coefficients of the model are
estimated by minimizing the sum of squared deviations. A new approach based on maximum likelihood estimation is proposed for
finding the coefficients on linear models with two predictors without any constrictive assumptions on the distribution of the errors.
The algorithm was developed, implemented, and tested as proof-of-concept using fourteen sets of compounds by investigating
the link between activity/property (as outcome) and structural feature information incorporated by molecular descriptors (as
predictors). The results on real data demonstrated that in all investigated cases the power of the error is significantly different
by the convenient value of two when the Gauss-Laplace distribution was used to relax the constrictive assumption of the normal
distribution of the error. Therefore, the Gauss-Laplace distribution of the error could not be rejected while the hypothesis that the
power of the error from Gauss-Laplace distribution is normal distributed also failed to be rejected.
Keywords :
Gauss-Laplace , e Likelihood , Generalized
Journal title :
Computational and Mathematical Methods in Medicine