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Data nilai kelas V SD CISOKA



       NO   PELAJARAN   NILAI
       1    1                   7
       2    1                   5
       3    1                   7
       4    1                   7
       5    1                   7
       6    1                   6
       7    1                   6
       8    1                   6
       9    1                   7
       10   1                   6
       11   1                   7
       12   1                   7
       13   1                   8
       14   1                   6
       15   1                   8
       16   1                   5
       17   1                   7
       18   1                   6
       19   1                   7
       20   1                   7
       21   1                   7
       22   1                   5
       23   1                   5
       24   1                   6
       25   1                   6
       26   1                   6
       27   1                   7
       28   1                   6
       29   1                   8
       30   1                   5
       31   2                   8
       32   2                   6
       33   2                   6
       34   2                   7
       35   2                   7
       36   2                   7
       37   2                   6
       38   2                   6
       39   2                   8
40   2   7
41   2   7
42   2   5
43   2   8
44   2   5
45   2   7
46   2   6
47   2   7
48   2   6
49   2   7
50   2   7
51   2   7
52   2   6
53   2   6
54   2   7
55   2   7
56   2   6
57   2   6
58   2   6
59   2   6
60   2   7
61   3   5
62   3   5
63   3   8
64   3   6
65   3   9
66   3   8
67   3   5
68   3   5
69   3   7
70   3   7
71   3   6
72   3   7
73   3   7
74   3   5
75   3   6
76   3   6
77   3   7
78   3   7
79   3   7
80   3   5
81   3   8
82   3   6
83   3   7
84   3   5
85           3                                          5
               86           3                                          2
               87           3                                          7
               88           3                                          7
               89           3                                          6
               90           3                                          6



Oneway

                                                          Descriptives

 penilaian
                                                                        95% Confidence Interval for
                                                                                  Mean
                 N           Mean      Std. Deviation     Std. Error   Lower Bound Upper Bound            Minimum    Maximum
 nilai ipa            30       6.43             .898           .164            6.10            6.77              5         8
 nilai ips            30       6.57             .774           .141            6.28            6.86              5         8
 nilai mtk            30       6.23            1.357           .248            5.73            6.74              2         9
 Total                90       6.41            1.037           .109            6.19            6.63              2         9




             Test of Homogeneity of Variances

  penilaian
   Levene
   Statistic               df1             df2                 Sig.
      3.446                        2             87               .036



                                                          ANOVA

 penilaian
                                                        Sum of
                                                        Squares        df        Mean Square          F          Sig.
 Between             (Combined)                            1.689            2           .844              .781      .461
 Groups              Linear Term   Contrast                 .600            1           .600              .555      .458
                                   Deviation
                                                           1.089            1          1.089          1.007          .318

 Within Groups                                            94.100            87         1.082
 Total                                                    95.789            89




                      Contrast Coefficients

                                       evaluasi
  Contrast            nilai ipa        nilai ips          nilai mtk
  1                           .5               .5                  1
Contrast Tests

                                                      Value of
                                         Contrast Contrast Std. Error      t          df      Sig. (2-tailed)
 penilaian Assume equal variances 1                      12.73a .233      54.755         87             .000
            Does not assume equal 1                      12.73a .270      47.113     40.372             .000
            variances
   a. The sum of the contrast coefficients is not zero.



Post Hoc Tests
                                                     Multiple Comparisons

 Dependent Variable: penilaian


                                                    Mean
                                                  Difference                                    95% Confidence Interval
                 (I) evaluasi    (J) evaluasi         (I-J)       Std. Error       Sig.       Lower Bound   Upper Bound
 Tukey HSD       nilai ipa       nilai ips                -.133        .269          .873             -.77            .51
                                 nilai mtk                 .200        .269          .738             -.44            .84
                 nilai ips       nilai ipa                 .133        .269          .873             -.51            .77
                                 nilai mtk                 .333        .269          .432             -.31            .97
                 nilai mtk       nilai ipa                -.200        .269          .738             -.84            .44
                                 nilai ips                -.333        .269          .432             -.97            .31
 LSD             nilai ipa       nilai ips                -.133        .269          .621             -.67            .40
                                 nilai mtk                 .200        .269          .458             -.33            .73
                 nilai ips       nilai ipa                 .133        .269          .621             -.40            .67
                                 nilai mtk                 .333        .269          .218             -.20            .87
                 nilai mtk       nilai ipa                -.200        .269          .458             -.73            .33
                                 nilai ips                -.333        .269          .218             -.87            .20



Homogeneous Subsets


                             penilaian

                                                        Subset
                                                       for alpha
                                                         = .05
                     evaluasi             N                1
  Tukey HSDa         nilai mtk                  30           6.23
                     nilai ipa                  30           6.43
                     nilai ips                  30           6.57
                     Sig.                                    .432
  Duncan a           nilai mtk                  30           6.23
                     nilai ipa                  30           6.43
                     nilai ips                  30           6.57
                     Sig.                                    .247
  Means for groups in homogeneous subsets are displayed.
    a. Uses Harmonic Mean Sample Size = 30.000.
Means Plots




                 6.6




                 6.5
 Mean of nilai




                 6.4




                 6.3




                 6.2


                       nilai ipa    nilai ips   nilai mtk

                                   evaluasi

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Grade V Student Achievement Data CISOKA Elementary School

  • 1. Data nilai kelas V SD CISOKA NO PELAJARAN NILAI 1 1 7 2 1 5 3 1 7 4 1 7 5 1 7 6 1 6 7 1 6 8 1 6 9 1 7 10 1 6 11 1 7 12 1 7 13 1 8 14 1 6 15 1 8 16 1 5 17 1 7 18 1 6 19 1 7 20 1 7 21 1 7 22 1 5 23 1 5 24 1 6 25 1 6 26 1 6 27 1 7 28 1 6 29 1 8 30 1 5 31 2 8 32 2 6 33 2 6 34 2 7 35 2 7 36 2 7 37 2 6 38 2 6 39 2 8
  • 2. 40 2 7 41 2 7 42 2 5 43 2 8 44 2 5 45 2 7 46 2 6 47 2 7 48 2 6 49 2 7 50 2 7 51 2 7 52 2 6 53 2 6 54 2 7 55 2 7 56 2 6 57 2 6 58 2 6 59 2 6 60 2 7 61 3 5 62 3 5 63 3 8 64 3 6 65 3 9 66 3 8 67 3 5 68 3 5 69 3 7 70 3 7 71 3 6 72 3 7 73 3 7 74 3 5 75 3 6 76 3 6 77 3 7 78 3 7 79 3 7 80 3 5 81 3 8 82 3 6 83 3 7 84 3 5
  • 3. 85 3 5 86 3 2 87 3 7 88 3 7 89 3 6 90 3 6 Oneway Descriptives penilaian 95% Confidence Interval for Mean N Mean Std. Deviation Std. Error Lower Bound Upper Bound Minimum Maximum nilai ipa 30 6.43 .898 .164 6.10 6.77 5 8 nilai ips 30 6.57 .774 .141 6.28 6.86 5 8 nilai mtk 30 6.23 1.357 .248 5.73 6.74 2 9 Total 90 6.41 1.037 .109 6.19 6.63 2 9 Test of Homogeneity of Variances penilaian Levene Statistic df1 df2 Sig. 3.446 2 87 .036 ANOVA penilaian Sum of Squares df Mean Square F Sig. Between (Combined) 1.689 2 .844 .781 .461 Groups Linear Term Contrast .600 1 .600 .555 .458 Deviation 1.089 1 1.089 1.007 .318 Within Groups 94.100 87 1.082 Total 95.789 89 Contrast Coefficients evaluasi Contrast nilai ipa nilai ips nilai mtk 1 .5 .5 1
  • 4. Contrast Tests Value of Contrast Contrast Std. Error t df Sig. (2-tailed) penilaian Assume equal variances 1 12.73a .233 54.755 87 .000 Does not assume equal 1 12.73a .270 47.113 40.372 .000 variances a. The sum of the contrast coefficients is not zero. Post Hoc Tests Multiple Comparisons Dependent Variable: penilaian Mean Difference 95% Confidence Interval (I) evaluasi (J) evaluasi (I-J) Std. Error Sig. Lower Bound Upper Bound Tukey HSD nilai ipa nilai ips -.133 .269 .873 -.77 .51 nilai mtk .200 .269 .738 -.44 .84 nilai ips nilai ipa .133 .269 .873 -.51 .77 nilai mtk .333 .269 .432 -.31 .97 nilai mtk nilai ipa -.200 .269 .738 -.84 .44 nilai ips -.333 .269 .432 -.97 .31 LSD nilai ipa nilai ips -.133 .269 .621 -.67 .40 nilai mtk .200 .269 .458 -.33 .73 nilai ips nilai ipa .133 .269 .621 -.40 .67 nilai mtk .333 .269 .218 -.20 .87 nilai mtk nilai ipa -.200 .269 .458 -.73 .33 nilai ips -.333 .269 .218 -.87 .20 Homogeneous Subsets penilaian Subset for alpha = .05 evaluasi N 1 Tukey HSDa nilai mtk 30 6.23 nilai ipa 30 6.43 nilai ips 30 6.57 Sig. .432 Duncan a nilai mtk 30 6.23 nilai ipa 30 6.43 nilai ips 30 6.57 Sig. .247 Means for groups in homogeneous subsets are displayed. a. Uses Harmonic Mean Sample Size = 30.000.
  • 5. Means Plots 6.6 6.5 Mean of nilai 6.4 6.3 6.2 nilai ipa nilai ips nilai mtk evaluasi