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Predicting Resource Policy Outcomes via Meta-Regression: Data Space, Model Space, and the Quest for 'Optimal Scope'

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Author Info
Klaus Moeltner (University of Nevada - Reno)
Randall Rosenberger (Oregon State University)

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Abstract

Resource-managing agencies are increasingly relying on secondary data to predict economic benefits for planned policy interventions. This `transfer of benefits' is often based on a quantitative synthesis of aggregate results for similar past interventions via Meta-Regression Models. However, this approach is generally plagued by the paucity of available studies and related small sample problems. A broadening of scope of the Meta-Regression Model by adding data from ``related, yet different" contexts or activities may circumvent these issues, but may not necessarily enhance the efficiency of transfer functions if the different contexts do not share policy-relevant parameters. We illustrate how different combinations of contexts can be interpreted as `data spaces' which can then be explored for the most promising transfer function using Bayesian Model Search techniques. Our results indicate that model-averaged benefit predictions for scope-augmented data spaces can be more robust and efficient than those flowing from the baseline context and data.

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Publisher Info
Article provided by Berkeley Electronic Press in its journal Contributions to Economic Analysis & Policy.

Volume (Year): 8 (2008)
Issue (Month): 1 ()
Pages: 2028-2028
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Handle: RePEc:bep:eapcon:v:8:y:2008:i:1:p:2028-2028

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Related research
Keywords: Bayesian variable selection model averaging meta-analysis benefit transfer resource valuation

Find related papers by JEL classification:
C11 - Mathematical and Quantitative Methods - - Econometric and Statistical Methods: General - - - Bayesian Analysis

Statistics
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This page was last updated on 2008-11-15.


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