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Optimal Experimentation a Comparison of the Perturbation and Dynamic Programming Algorithms

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Author Info
Michael T. Gapen
Thomas F. Cosimano

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Abstract

Cosimano (2003) uses the perturbation method to approximate optimal experimentation problems in the neighborhood of the augmented linear regulator problem as formulated by Hansen and Sargent (2004) and Anderson, Hansen, McGratten and Sargent (1966). Cosimano and Gapen (2005) develop a computer algorithm which implements the perturbation method for any economic problem within the class specified by Hansen and Sargent. As a result, optimal experimentation problems may be analyzed for any linear quadratic model of the economy. Wieland (2000) has developed a dynamic programming algorithm for solving optimal experimentation problems with four parameters. He has used this algorithm to analyze monetary policy when the central bank is uncertain about the fundamental equations for the economy in Wieland (2002). Wieland's models fit into the Hansan and Sargent class of economies. As a result, this paper examines the cost and benefits of the Perturbation and Dynamic Programming Algorithms for solving optimal experimentation problems in the context of Wieland's (2002) model of the economy. Anderson, E. W., L. P. Hansen, E. R. McGrattan, and T. J. Sargent, 1996. Mechanics of Forming and Estimating Dynamic Linear Economies. In Handbook of computational economics, vol 1, edited by H.M. Amman. D.A. Kendrick and J. Rust, Elsevier, Netherlands. Cosimano, T. F. 2003. Optimal Experimentation and the Perturbation Method around the Augmented Linear Regulator Problem. Working Paper University of Notre Dame. Cosimano, T. F. and M. T. Gapen, (2005). An Algorithm for Simulating Optimal Experimentation Problems using the Perturbation Method around the Augmented Linear Regulator Problem.. Hansen, L. P. and T. J. Sargent, (2004). Recursive LinearModels of Dynamic Economies, University of Chicago manuscript. Wieland, V., 2000. Learning by Doing and the Value of Optimal Experimentation. Journal of Economic Dynamics and Control 24, 501-534. Wieland, V. 2002. Monetary Policy and Uncertainty about the Natural Unemployment Rate. Working Paper University of Frankfurt

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Paper provided by Society for Computational Economics in its series Computing in Economics and Finance 2005 with number 92.

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Date of creation: 11 Nov 2005
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Handle: RePEc:sce:scecf5:92

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Related research
Keywords: Optimal Experimentation; Learning; Perturbation Method;

Find related papers by JEL classification:
C44 - Mathematical and Quantitative Methods - - Econometric and Statistical Methods: Special Topics - - - Statistical Decision Theory; Operations Research
C60 - Mathematical and Quantitative Methods - - Mathematical Methods and Programming - - - General
D81 - Microeconomics - - Information, Knowledge, and Uncertainty - - - Criteria for Decision-Making under Risk and Uncertainty

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This page was last updated on 2009-11-27.


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