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The convergence of least squares learning in stochastic temporary equilibrium models
Authors:Shurojit Chatterji
Affiliation:(1) Centro de Investigación Económica, ITAM, Ave. Camino Santa Teresa 930, México D.F. 10700, MéXICO (e-mail: shurojit@itam.mx) , MX
Abstract:Summary. This paper provides conditions for the almost sure convergence of the least squares learning rule in a stochastic temporary equilibrium model, where regressions are performed on the past values of the endogenous state variable. In contrast to earlier studies, (Evans and Honkapohja, 1998; Marcent and Sargent, 1989), which were local analyses, the dynamics are studied from a global viewpoint, which allows one to obtain an almost sure convergence result without employing projection facilities. Received: April 7, 2001; revised version: September 5, 2001
Keywords:and Phrases: Least squares learning   Almost sure convergence.
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