Title of article
Moment-based estimation of smooth transition regression models with endogenous variables
Author/Authors
Areosa، نويسنده , , Waldyr Dutra and McAleer، نويسنده , , Michael and Medeiros، نويسنده , , Marcelo C.، نويسنده ,
Pages
12
From page
100
To page
111
Abstract
Nonlinear regression models have been widely used in practice for a variety of time series and cross-section datasets. For purposes of analyzing univariate and multivariate time series data, in particular, smooth transition regression (STR) models have been shown to be very useful for representing and capturing asymmetric behavior. Most STR models have been applied to univariate processes, and have made a variety of assumptions, including stationary or cointegrated processes, uncorrelated, homoskedastic or conditionally heteroskedastic errors, and weakly exogenous regressors. Under the assumption of exogeneity, the standard method of estimation is nonlinear least squares. The primary purpose of this paper is to relax the assumption of weakly exogenous regressors and to discuss moment-based methods for estimating STR models. The paper analyzes the properties of the STR model with endogenous variables by providing a diagnostic test of linearity of the underlying process under endogeneity, developing an estimation procedure and a misspecification test for the STR model, presenting the results of Monte Carlo simulations to show the usefulness of the model and estimation method, and providing an empirical application for inflation rate targeting in Brazil. We show that STR models with endogenous variables can be specified and estimated by a straightforward application of existing results in the literature.
Keywords
Nonlinear instrumental variables , endogeneity , Smooth transition , Generalized Method of Moments , nonlinear models , Inflation targeting
Journal title
Astroparticle Physics
Record number
2041451
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