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On stochastic linear regression model selection
Praveen J.P, Mahaboob B, Donthi R, Prasad S.V,
Published in AIP Publishing
2019
Volume: 2177
   
Abstract
The research article primarily focuses on the criteria for selecting best stochastic linear regression model namely Cp - conditional mean square error prediction, Generalized Mean Squared Error criterion (GMSE) which comes out of the deficiencies of R2 and R̄2 criteria. The most uncomfortable aspect of both R2 and R̄2 measures is that they do not include a consideration of losses associated with choosing an incorrect model. C.L. Cheng et al, in 2014, in their research paper proposed the goodness of fit statistics based on the variants of R2 for multiple measurement errors and also studied the asymptotic properties of the conventional R2 and the proposed variants of R2 like goodness of fit statistics analytically and numerically. M. Hasheem Pesaran et al, in 1994, in their paper discussed why both R2 and R̄2 are inappropriate as a measure of fit and for model selection in the sense that their use does not guarantee that true model is chosen even asymptotically. D. Wallach et.al, in 1987, in their paper used the mean square error of prediction (MSEP) as a criterion for evaluating models for studying ecological and agronomic systems. M. Revan Ozkale, in 2009, in his paper introduced a new estimator by combining ideas underlying the mined and the ridge regression estimators under the assumption that the errors are not independent and identically distributes when there are stochastic linear restrictions on the parameter vector. David A. Mc Allester, in 2003, in his article, gave a PAC-Bayesian performance guarantee for stochastic model selection that is superior to analogous guarantees for deterministic model selection. © 2019 Author(s).
About the journal
JournalData powered by TypesetRECENT TRENDS IN PURE AND APPLIED MATHEMATICS
PublisherData powered by TypesetAIP Publishing
ISSN0094243X
Open Access0