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LAMPIRAN I


Tahun        Jumlah           Inflasi     PMDN (Juta         PMA (000

             Tenaga            (%)           Rupiah)           US$)

           Kerja(Jiwa)

1989       4.138.792           7,94         139.581.94         9.492,54
1990       3.820.329           7,56         250.409,60        31.018,71
1991       4.726.201           8,99         227.071,03        16.051,30
1992       4.099.809           4,56         118.243,37        89.349,00
1993       4.193.152           9,75         441.531,49        55.661,97
1994       4.318.993           8.28         309.781,99        57.954,26
1995       4.493.198           7,24         316.447,01        88.850,04
1996       4.573.651           8,70         243.353,07        61.589,05
1997       4.642.766          13,10         469.005,44        47.869,31
1998       4.855.296          83,56          80.063,68        83.810,93
1999       5.037.500           1,37         110.627,34        64.087,82
2000       4.947.539           5,73         118.277,75        85.876,00
2001       4.977.323          14,79         501.744,66        41.782,31
2002       4.928.353           9,59         836.694,72        10.382,57
2003       4.835.793           4,23         471.555,93        89.450,26
2004       4.756.078           6,80         683.450,46        95.764,98
2005       5.166.132          22,41         599.400,64       107.202,54
2006       4.859.647           6,11         797.259,80       233.912,91
2007       5.082.797           6,60         392.816,80       230.203,52
2008       5.540.263          10,72         391.333,72       255.176,02
        Sumber : Badan Pusat Statistik Sumatera Utara 2008




                                               Universitas Sumatera Utara
LAMPIRAN II

   Hasil Regressi linear Tenaga Kerja Sebagai Variabel Dependen

Dependent Variable: TENAGAKERJA
Method: Least Squares
Date: 08/11/10 Time: 16:41
Sample: 1989 2008
Included observations: 20

      Variable       Coefficient    Std. Error     t-Statistic     Prob.

         C            4218554.      194999.4       21.63368        0.0000
      INFLASI        -5035.085      4903.542      -1.026826        0.3198
       PMDN           0.436729      0.384882       1.134710        0.2732
        PMA           2.904496      1.196677       2.427134        0.0274

R-squared             0.874860     Mean dependent var            4699681.
Adjusted R-squared    0.757646     S.D. dependent var            420465.6
S.E. of regression    362273.1     Akaike info criterion         28.61504
Sum squared resid     2.10E+12     Schwarz criterion             28.81419
Log likelihood       -282.1504     F-statistic                   5.198082
Durbin-Watson stat    1.498565     Prob(F-statistic)             0.051788




                                                           Universitas Sumatera Utara
LAMPIRAN III
       HASIL REGRESSI ANTARA VARIABEL BEBAS

Dependent Variable: INFLASI
Method: Least Squares
Date: 08/11/10 Time: 20:46
Sample: 1989 2008
Included observations: 20

       Variable       Coefficient    Std. Error     t-Statistic     Prob.

         C              17.90732     8.611708       2.079415        0.0530
       PMDN            -1.60E-05     1.86E-05      -0.857884        0.4029
        PMA             5.57E-06     5.92E-05       0.094137        0.9261

R-squared              0.042255     Mean dependent var            12.40150
Adjusted R-squared    -0.070420     S.D. dependent var            17.31907
S.E. of regression     17.91850     Akaike info criterion         8.747026
Sum squared resid      5458.237     Schwarz criterion             8.896386
Log likelihood        -84.47026     F-statistic                   0.375018
Durbin-Watson stat     2.174313     Prob(F-statistic)             0.692823



Dependent Variable: PMDN
Method: Least Squares
Date: 08/11/10 Time: 20:47
Sample: 1989 2008
Included observations: 20

       Variable       Coefficient    Std. Error     t-Statistic     Prob.

         C             340719.0      90943.56       3.746489        0.0016
      INFLASI         -2595.279      3025.209      -0.857884        0.4029
        PMA            0.756473      0.731434       1.034233        0.3155

R-squared              0.098480     Mean dependent var            374932.5
Adjusted R-squared    -0.007582     S.D. dependent var            227428.2
S.E. of regression     228288.7     Akaike info criterion         27.65209
Sum squared resid      8.86E+11     Schwarz criterion             27.80145
Log likelihood        -273.5209     F-statistic                   0.928517
Durbin-Watson stat     1.190103     Prob(F-statistic)             0.414278




                                                            Universitas Sumatera Utara
Dependent Variable: PMA
Method: Least Squares
Date: 08/11/10 Time: 20:48
Sample: 1989 2008
Included observations: 20

       Variable       Coefficient    Std. Error     t-Statistic     Prob.

         C             57275.28      36999.59       1.547998        0.1400
      INFLASI          93.53082      993.5629       0.094137        0.9261
       PMDN            0.078252      0.075662       1.034233        0.3155

R-squared              0.059941     Mean dependent var            87774.30
Adjusted R-squared    -0.050654     S.D. dependent var            71631.62
S.E. of regression     73423.43     Akaike info criterion         25.38335
Sum squared resid      9.16E+10     Schwarz criterion             25.53271
Log likelihood        -250.8335     F-statistic                   0.541986
Durbin-Watson stat     0.572708     Prob(F-statistic)             0.591314




                                                            Universitas Sumatera Utara

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Appendix

  • 1. LAMPIRAN I Tahun Jumlah Inflasi PMDN (Juta PMA (000 Tenaga (%) Rupiah) US$) Kerja(Jiwa) 1989 4.138.792 7,94 139.581.94 9.492,54 1990 3.820.329 7,56 250.409,60 31.018,71 1991 4.726.201 8,99 227.071,03 16.051,30 1992 4.099.809 4,56 118.243,37 89.349,00 1993 4.193.152 9,75 441.531,49 55.661,97 1994 4.318.993 8.28 309.781,99 57.954,26 1995 4.493.198 7,24 316.447,01 88.850,04 1996 4.573.651 8,70 243.353,07 61.589,05 1997 4.642.766 13,10 469.005,44 47.869,31 1998 4.855.296 83,56 80.063,68 83.810,93 1999 5.037.500 1,37 110.627,34 64.087,82 2000 4.947.539 5,73 118.277,75 85.876,00 2001 4.977.323 14,79 501.744,66 41.782,31 2002 4.928.353 9,59 836.694,72 10.382,57 2003 4.835.793 4,23 471.555,93 89.450,26 2004 4.756.078 6,80 683.450,46 95.764,98 2005 5.166.132 22,41 599.400,64 107.202,54 2006 4.859.647 6,11 797.259,80 233.912,91 2007 5.082.797 6,60 392.816,80 230.203,52 2008 5.540.263 10,72 391.333,72 255.176,02 Sumber : Badan Pusat Statistik Sumatera Utara 2008 Universitas Sumatera Utara
  • 2. LAMPIRAN II Hasil Regressi linear Tenaga Kerja Sebagai Variabel Dependen Dependent Variable: TENAGAKERJA Method: Least Squares Date: 08/11/10 Time: 16:41 Sample: 1989 2008 Included observations: 20 Variable Coefficient Std. Error t-Statistic Prob. C 4218554. 194999.4 21.63368 0.0000 INFLASI -5035.085 4903.542 -1.026826 0.3198 PMDN 0.436729 0.384882 1.134710 0.2732 PMA 2.904496 1.196677 2.427134 0.0274 R-squared 0.874860 Mean dependent var 4699681. Adjusted R-squared 0.757646 S.D. dependent var 420465.6 S.E. of regression 362273.1 Akaike info criterion 28.61504 Sum squared resid 2.10E+12 Schwarz criterion 28.81419 Log likelihood -282.1504 F-statistic 5.198082 Durbin-Watson stat 1.498565 Prob(F-statistic) 0.051788 Universitas Sumatera Utara
  • 3. LAMPIRAN III HASIL REGRESSI ANTARA VARIABEL BEBAS Dependent Variable: INFLASI Method: Least Squares Date: 08/11/10 Time: 20:46 Sample: 1989 2008 Included observations: 20 Variable Coefficient Std. Error t-Statistic Prob. C 17.90732 8.611708 2.079415 0.0530 PMDN -1.60E-05 1.86E-05 -0.857884 0.4029 PMA 5.57E-06 5.92E-05 0.094137 0.9261 R-squared 0.042255 Mean dependent var 12.40150 Adjusted R-squared -0.070420 S.D. dependent var 17.31907 S.E. of regression 17.91850 Akaike info criterion 8.747026 Sum squared resid 5458.237 Schwarz criterion 8.896386 Log likelihood -84.47026 F-statistic 0.375018 Durbin-Watson stat 2.174313 Prob(F-statistic) 0.692823 Dependent Variable: PMDN Method: Least Squares Date: 08/11/10 Time: 20:47 Sample: 1989 2008 Included observations: 20 Variable Coefficient Std. Error t-Statistic Prob. C 340719.0 90943.56 3.746489 0.0016 INFLASI -2595.279 3025.209 -0.857884 0.4029 PMA 0.756473 0.731434 1.034233 0.3155 R-squared 0.098480 Mean dependent var 374932.5 Adjusted R-squared -0.007582 S.D. dependent var 227428.2 S.E. of regression 228288.7 Akaike info criterion 27.65209 Sum squared resid 8.86E+11 Schwarz criterion 27.80145 Log likelihood -273.5209 F-statistic 0.928517 Durbin-Watson stat 1.190103 Prob(F-statistic) 0.414278 Universitas Sumatera Utara
  • 4. Dependent Variable: PMA Method: Least Squares Date: 08/11/10 Time: 20:48 Sample: 1989 2008 Included observations: 20 Variable Coefficient Std. Error t-Statistic Prob. C 57275.28 36999.59 1.547998 0.1400 INFLASI 93.53082 993.5629 0.094137 0.9261 PMDN 0.078252 0.075662 1.034233 0.3155 R-squared 0.059941 Mean dependent var 87774.30 Adjusted R-squared -0.050654 S.D. dependent var 71631.62 S.E. of regression 73423.43 Akaike info criterion 25.38335 Sum squared resid 9.16E+10 Schwarz criterion 25.53271 Log likelihood -250.8335 F-statistic 0.541986 Durbin-Watson stat 0.572708 Prob(F-statistic) 0.591314 Universitas Sumatera Utara