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Exploring Hoover and Perez's experimental designs using global sensitivity analysis

Published 22 Jan 2014 in stat.CO | (1401.5617v1)

Abstract: This paper investigates variable-selection procedures in regression that make use of global sensitivity analysis. The approach is combined with existing algorithms and it is applied to the time series regression designs proposed by Hoover and Perez. A comparison of an algorithm employing global sensitivity analysis and the (optimized) algorithm of Hoover and Perez shows that the former significantly improves the recovery rates of original specifications.

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