Abstract
AbstractThe functional least squares procedure of Chambers and Heathcote for estimating the slope parameter in a linear regression model is analysed. Strong uniform consistency for the family of these estimators is proved together with a necessary and sufficient condition for weak convergence in the space of continuous vector valued functions. These results are then used to develop the asymptotic normality of an adaptive version of the functional least squares estimator with minimum limiting variance.
Publisher
Cambridge University Press (CUP)
Subject
General Mathematics,Statistics and Probability
Reference11 articles.
1. English translation;Theory of Probability Appl.
2. Limit Behaviour of the Empirical Characteristic Function
3. Limit theorems for stochastic processes;Skorohod;Teor. Verojatnost. i Primenen.,1956
4. Weak Convergence of the Empirical Characteristic Function
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12 articles.
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