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Bias Correction of OLSE in the Regression Model With Lagged Dependent Variables

Computational Statistics and Data Analysis - Netherlands
doi 10.1016/s0167-9473(99)00108-5
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Abstract

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Categories
StatisticsProbabilityApplied MathematicsComputational TheoryComputational MathematicsMathematics
Date

October 1, 2000

Authors
Hisashi Tanizaki
Publisher

Elsevier BV


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