Title of article :
Strong consistency of least-squares estimation in linear regression models with vague concepts
Author/Authors :
Krنtschmer، نويسنده , , Volker، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2006
Abstract :
Linear regression models with vague concepts extend the classical single equation linear regression models by admitting observations in form of fuzzy subsets instead of real numbers. They have recently been introduced [cf. Krنtschmer, Induktive statistik auf basis unscharfer meكkonzepte am beispiel linearer regressionsmodelle, Unpublished Habilitation Monograph, Faculty of Law and Economics of the University of Saarland, Saarbrücken, 2001] to improve the empirical meaningfulness of the relationship between the involved items by a more sensitive attention to the problems of data measurement, in particular the fundamental problem of adequacy. The parameters of such models are still real numbers, and a method of estimation can be applied which extends directly the ordinary least-squares method. This paper deals with some first asymptotic properties of estimators obtained by the method. Firstly, strong consistency will be shown, and secondly, the convergence rate will be investigated. The later result will be the starting point for a future study which will calculate the limit distributions of the estimators.
Keywords :
Epistemic vagueness , Physical vagueness , Problem of adequacy , Aumann-expected value of random fuzzy sets , Random fuzzy sets , Lrvc-models , Least-squares estimation in lrvc-models
Journal title :
Journal of Multivariate Analysis
Journal title :
Journal of Multivariate Analysis