GENERALIZED STOCHASTIC GRADIENT LEARNING
We study the properties of the generalized stochastic gradient (GSG) learning in forward-looking models. GSG algorithms are a natural and convenient way to model learning when agents allow for parameter drift or robustness to parameter uncertainty in their beliefs. The conditions for convergence of GSG learning to a rational expectations equilibrium are distinct from but related to the well-known stability conditions for least squares learning. Copyright (2010) by the Economics Department of the University of Pennsylvania and the Osaka University Institute of Social and Economic Research Association.
Year of publication: |
2010
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Authors: | Evans, George W. ; Honkapohja, Seppo ; Williams, Noah |
Published in: |
International Economic Review. - Department of Economics. - Vol. 51.2010, 1, p. 237-262
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Publisher: |
Department of Economics |
Saved in:
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