Partial Equilibrium Framework Empirical Evidence for Argentina (1980-2002)

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Table 4. Regression Statistics for the Model
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Partial Equilibrium Framework Empirical Evidence for Argentina ( )

Dependent Variable: CRECX Method: Least Squares Date: 04/24/02 Time: 18:25 Sample(adjusted): 1980: :02 Included observations: 265 after adjusting endpoints VariableCoefficientStd. Errort-StatisticProb. CRECTCN C R-squared Mean dependent var Adjusted R-squared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood F-statistic Durbin-Watson stat Prob(F-statistic) Dependent Variable: CRECTB Method: Least Squares Date: 04/24/02 Time: 18:30 Sample(adjusted): 1980: :02 Included observations: 265 after adjusting endpoints VariableCoefficientStd. Errort-StatisticProb. CRECTCN C R-squared Mean dependent var Adjusted R-squared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood F-statistic Durbin-Watson stat Prob(F-statistic)

Dependent Variable: CRECX Method: Least Squares Date: 04/24/02 Time: 18:33 Sample(adjusted): 1980: :02 Included observations: 265 after adjusting endpoints VariableCoefficientStd. Errort-StatisticProb. CRECTCR C R-squared Mean dependent var Adjusted R-squared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood F-statistic Durbin-Watson stat Prob(F-statistic) Dependent Variable: CRECTB Method: Least Squares Date: 04/24/02 Time: 18:36 Sample(adjusted): 1980: :02 Included observations: 265 after adjusting endpoints VariableCoefficientStd. Errort-StatisticProb. CRECTCR C R-squared Mean dependent var Adjusted R-squared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood F-statistic Durbin-Watson stat Prob(F-statistic)

Dependent Variable: HPX Method: Least Squares Date: 04/24/02 Time: 18:40 Sample(adjusted): 1980: :02 Included observations: 266 after adjusting endpoints VariableCoefficientStd. Errort-StatisticProb. TCR C R-squared Mean dependent var Adjusted R-squared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood F-statistic Durbin-Watson stat Prob(F-statistic) Dependent Variable: HPTB Method: Least Squares Date: 04/24/02 Time: 18:48 Sample(adjusted): 1980: :02 Included observations: 266 after adjusting endpoints VariableCoefficientStd. Errort-StatisticProb. TCR C R-squared Mean dependent var Adjusted R-squared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood F-statistic Durbin-Watson stat Prob(F-statistic)

Dependent Variable: HPM Method: Least Squares Date: 04/23/03 Time: 17:12 Sample(adjusted): 1980: :02 Included observations: 266 after adjusting endpoints VariableCoefficientStd. Errort-StatisticProb. C TCR R-squared Mean dependent var Adjusted R-squared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood F-statistic Durbin-Watson stat Prob(F-statistic)