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Statistics / Estimation theory / Regression analysis / Time series models / Simultaneous equation methods / Statistical models / Vector autoregression / Autoregressive model / Instrumental variable / Ordinary least squares / Generalized method of moments / Variance
Date: 2016-01-22 21:37:07
Statistics
Estimation theory
Regression analysis
Time series models
Simultaneous equation methods
Statistical models
Vector autoregression
Autoregressive model
Instrumental variable
Ordinary least squares
Generalized method of moments
Variance

University of Hawai`i at Mānoa Department of Economics Working Paper Series Saunders Hall 542, 2424 Maile Way, Honolulu, HIPhone: (

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