Strong consistency of the least squares estimator in regression models with adaptive learning

  • This paper looks at the strong consistency of the ordinary least squares (OLS) estimator in a stereotypical macroeconomic model with adaptive learning. It is a companion to Christopeit & Massmann (2017, Econometric Theory) which considers the estimator’s convergence in distribution and its weak consistency in the same setting. Under constant gain learning, the model is closely related to stationary, (alternating) unit root or explosive autoregressive processes. Under decreasing gain learning, the regressors in the model are asymptotically collinear. The paper examines, first, the issue of strong convergence of the learning recursion: It is argued that, under constant gain learning, the recursion does not converge in any probabilistic sense, while for decreasing gain learning rates are derived at which the recursion converges almost surely to the rational expectations equilibrium. Secondly, the paper establishes the strong consistency of the OLS estimators, under both constant and decreasing gain learning, as well as rates at which the estimators converge almost surely. In the constant gain model, separate estimators for the intercept and slope parameters are juxtaposed to the joint estimator, drawing on the recent literature on explosive autoregressive models. Thirdly, it is emphasised that strong consistency is obtained in all models although the near-optimal condition for the strong consistency of OLS in linear regression models with stochastic regressors, established by Lai & Wei (1982), is not always met.

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Metadaten
Author:Norbert Christopeit, Michael Massmann
URN:urn:nbn:de:hbz:992-opus4-5341
Series (Serial Number):WHU – Working Paper Series in Economics (WP 17/07)
Publisher:WHU - Otto Beisheim School of Management
Place of publication:Vallendar
Document Type:Working Paper
Language:English
Date of Publication (online):2017/11/29
Date of first Publication:2017/11/29
Release Date:2017/11/29
Tag:Adaptives Lernen; Fast sichere Konvergenz; Methode der kleinsten Quadrate; Nichtstationäre Regression
Adaptive learning; Almost sure convergence; Non-stationary regression; Ordinary least squares
Page Number:46
Institutes:WHU Economics Group / Chair of Econometrics and Statistics
JEL-Classification:C Mathematical and Quantitative Methods / C2 Single Equation Models; Single Variables / C22 Time-Series Models; Dynamic Quantile Regressions (Updated!)
C Mathematical and Quantitative Methods / C5 Econometric Modeling / C51 Model Construction and Estimation
D Microeconomics / D8 Information, Knowledge, and Uncertainty / D83 Search; Learning; Information and Knowledge; Communication; Belief
Licence (German):Copyright for this publication