proveeks_bilag.out The SAS System 22:27 Thursday, November 27, 2003 1 Source DF Squares Square F Value Pr > F



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The SAS System 22:27 Thursday, November 27, 2003 1 Model 4 18106 4526.41616 54.70 <.0001 Error 245 20273 82.74845 Corrected Total 249 38379 Root MSE 9.09662 R-Square 0.4718 Dependent 6.44232 Adj R-Sq 0.4631 Coeff Var 141.20096 Intercept 1-0.53705 1.46242-0.37 0.7138 OMS 1 0.05673 0.00907 6.26 <.0001 KONK 1 0.12074 0.74543 0.16 0.8715 NYPR 1-0.84124 1.55500-0.54 0.5890 Nypr_Oms 1 0.01211 0.01053 1.15 0.2515 The SAS System 22:27 Thursday, November 27, 2003 2 Dependent Variable: uhatsq Model 10 5392848 539285 10.06 <.0001 Error 239 12807787 53589 Corrected Total 249 18200635 Root MSE 231.49313 R-Square 0.2963 Dependent 81.09348 Adj R-Sq 0.2669 Coeff Var 285.46454 Intercept 1-5.31528 56.68968-0.09 0.9254 OMS 1 0.64680 0.68908 0.94 0.3489 KONK 1-12.83006 45.46314-0.28 0.7780 NYPR 1-7.35278 80.44271-0.09 0.9272 Nypr_Oms 1 0.13872 0.87712 0.16 0.8745 Oms2 1-0.00135 0.00166-0.81 0.4191 Oms_Konk 1 0.05911 0.29917 0.20 0.8435 Nypr_oms2 1 0.00104 0.00191 0.54 0.5890 Nypr_Konk 1-21.53396 51.49511-0.42 0.6762 Nypr_Oms_Konk 1 0.33117 0.36504 0.91 0.3652 konk2 1 3.64808 17.60133 0.21 0.8360 The SAS System 22:27 Thursday, November 27, 2003 3 Model 4 0.42785 0.10696 34.11 <.0001 Corrected Total 249 1.19615

Root MSE 0.05600 R-Square 0.3577 Dependent 0.50827 Adj R-Sq 0.3472 Coeff Var 11.01754 Intercept 1 0.16518 0.13468 1.23 0.2212 OMS 1 0.05011 0.00782 6.40 <.0001 KONK 1-0.13635 0.07234-1.88 0.0606 NYPR 1-0.11915 0.15531-0.77 0.4437 Nypr_Oms 1 0.00562 0.00973 0.58 0.5640 The SAS System 22:27 Thursday, November 27, 2003 4 Model 4 0.01493 0.00373 1.19 0.3156 Root MSE 0.05600 R-Square 0.0191 Dependent 0.05117 Adj R-Sq 0.0030 Coeff Var 109.44555 Intercept 1 0.05011 0.00782 6.40 <.0001 TOms 1 0.16518 0.13468 1.23 0.2212 TKonk 1-0.13635 0.07234-1.88 0.0606 TNypr 1-0.11915 0.15531-0.77 0.4437 NYPR 1 0.00562 0.00973 0.58 0.5640 The SAS System 22:27 Thursday, November 27, 2003 5 NOTE: No intercept in model. R-Square is redefined. Model 2 0.66462 0.33231 106.60 <.0001 Error 248 0.77310 0.00312 Uncorrected Total 250 1.43772 Root MSE 0.05583 R-Square 0.4623 Dependent 0.50827 Adj R-Sq 0.4579 Coeff Var 10.98489 OMS 1 0.05533 0.00422 13.11 <.0001 KONK 1-0.08634 0.04791-1.80 0.0727 The SAS System 22:27 Thursday, November 27, 2003 6

Model 1 0.01013 0.01013 3.25 0.0727 Error 248 0.77310 0.00312 Root MSE 0.05583 R-Square 0.0129 Dependent 0.05117 Adj R-Sq 0.0089 Coeff Var 109.12120 Intercept 1 0.05533 0.00422 13.11 <.0001 TKonk 1-0.08634 0.04791-1.80 0.0727 The SAS System 22:27 Thursday, November 27, 2003 7 Model 4 0.42785 0.10696 34.11 <.0001 Corrected Total 249 1.19615 Root MSE 0.05600 R-Square 0.3577 Dependent 0.50827 Adj R-Sq 0.3472 Coeff Var 11.01754 Intercept 1 0.16518 0.13468 1.23 0.2212 OMS 1 0.05011 0.00782 6.40 <.0001 KONK 1-0.13635 0.07234-1.88 0.0606 NYPR 1-0.11915 0.15531-0.77 0.4437 Nypr_Oms 1 0.00562 0.00973 0.58 0.5640 The SAS System 22:27 Thursday, November 27, 2003 8 Consistent Covariance of Estimates Variable Intercept OMS KONK NYPR Nypr_Oms Intercept 0.0167353388-0.000400073-0.007293883-0.004927135 0.0003640264 OMS -0.000400073 0.0000485806-9.680405E-6 0.0004162256-0.000048636 KONK -0.007293883-9.680405E-6 0.0054340433-0.001871445 0.0000426205 NYPR -0.004927135 0.0004162256-0.001871445 0.0315942172-0.001071774 Nypr_Oms 0.0003640264-0.000048636 0.0000426205-0.001071774 0.000088902 The SAS System 22:27 Thursday, November 27, 2003 9 Model 4 0.01493 0.00373 1.19 0.3156

Root MSE 0.05600 R-Square 0.0191 Dependent 0.05117 Adj R-Sq 0.0030 Coeff Var 109.44555 Intercept 1 0.05011 0.00782 6.40 <.0001 TOms 1 0.16518 0.13468 1.23 0.2212 TKonk 1-0.13635 0.07234-1.88 0.0606 TNypr 1-0.11915 0.15531-0.77 0.4437 NYPR 1 0.00562 0.00973 0.58 0.5640 The SAS System 22:27 Thursday, November 27, 2003 10 Consistent Covariance of Estimates Variable Intercept TOms TKonk TNypr NYPR Intercept 0.0000485806-0.000400073-9.680405E-6 0.0004162256-0.000048636 TOms -0.000400073 0.0167353388-0.007293883-0.004927135 0.0003640264 TKonk -9.680405E-6-0.007293883 0.0054340433-0.001871445 0.0000426205 TNypr 0.0004162256-0.004927135-0.001871445 0.0315942172-0.001071774 NYPR -0.000048636 0.0003640264 0.0000426205-0.001071774 0.000088902 The SAS System 22:27 Thursday, November 27, 2003 11 Model 4 0.03293 0.00823 2.69 0.0319 Error 245 0.75030 0.00306 Root MSE 0.05534 R-Square 0.0420 Dependent 0.05117 Adj R-Sq 0.0264 Coeff Var 108.15595 Intercept 1 0.05540 0.00434 12.78 <.0001 k_m2 1-8.89043 4.12982-2.15 0.0323 k_m1 1-0.48916 0.94698-0.52 0.6059 k_p1 1 0.04567 0.11012 0.41 0.6787 k_p2 1-0.23029 0.09863-2.33 0.0204 The SAS System 22:27 Thursday, November 27, 2003 12 Test 1 Results for Dependent Variable TPrmres Source DF Square F Value Pr > F Numerator 3 0.00760 2.48 0.0615 Denominator 245 0.00306 The SAS System 22:27 Thursday, November 27, 2003 13 NOTE: No intercept in model. R-Square is redefined.

Model 5 0.68742 0.13748 44.89 <.0001 Error 245 0.75030 0.00306 Uncorrected Total 250 1.43772 Root MSE 0.05534 R-Square 0.4781 Dependent 0.50827 Adj R-Sq 0.4675 Coeff Var 10.88773 OMS 1 0.05540 0.00434 12.78 <.0001 d_m2 1-8.89043 4.12982-2.15 0.0323 d_m1 1-0.48916 0.94698-0.52 0.6059 d_p1 1 0.04567 0.11012 0.41 0.6787 d_p2 1-0.23029 0.09863-2.33 0.0204 The SAS System 22:27 Thursday, November 27, 2003 14 Test 1 Results for Dependent Variable PRMRES Source DF Square F Value Pr > F Numerator 3 0.00760 2.48 0.0615 Denominator 245 0.00306