Solving the Stochastic Growth Model by Linear-Quadratic Approximation and by Value-Function Iteration |
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Authors: | Lawrence J. Christiano |
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Affiliation: | Research Department , Federal Reserve Bank of Minneapolis , Minneapolis , MN , 55480 |
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Abstract: | ![]() This article describes three approximation methods I used to solve the growth model (Model 1) studied by the National Bureau of Economic Research's nonlinear rational-expectations-modeling group project, the results of which were summarized by Taylor and Uhlig (1990). The methods involve computing exact solutions to models that approximate Model 1 in different ways. The first two methods approximate Model 1 about its nonstochastic steady state. The third method works with a version of the model in which the state space has been discretized. A value function iteration method is used to solve that model. |
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Keywords: | Decision rule Dynamic programming Ergodic set Markov chain Simulations Wold representation |
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