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Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 1
Obs posisi pupuk kelompok TT JD BST BKT BSA BKA LD
1 Ujung Sapi 1 21.0 3 4.15 1.01 0.40 0.08 113.89
2 Ujung Sapi 2 19.0 5 4.63 0.90 1.64 0.26 176.38
3 Ujung Sapi 3 24.7 6 4.98 1.19 0.54 0.17 159.72
4 Ujung Kambing 1 20.0 5 4.47 1.00 0.55 0.07 134.72
5 Ujung Kambing 2 18.5 5 3.60 0.92 0.90 0.22 155.55
6 Ujung Kambing 3 21.0 6 5.05 1.01 0.68 0.14 145.83
7 Ujung Ayam 1 21.0 5 4.37 0.98 0.82 0.12 113.89
8 Ujung Ayam 2 23.0 5 2.90 0.50 1.00 0.15 125.00
9 Ujung Ayam 3 21.5 5 5.38 1.30 1.10 0.21 161.11
10 Ujung Kascing 1 19.0 5 4.70 1.26 0.72 0.12 144.44
11 Ujung Kascing 2 19.5 5 3.20 0.70 2.60 0.15 81.94
12 Ujung Kascing 3 20.0 4 4.22 1.14 0.34 0.12 118.06
13 Ujung Kompos 1 21.0 5 3.67 0.77 0.37 0.15 158.33
14 Ujung Kompos 2 24.5 5 3.58 0.77 1.80 0.22 94.44
15 Ujung Kompos 3 19.5 5 5.08 1.13 0.67 0.22 180.56
16 Tengah Sapi 1 18.0 5 3.94 0.95 0.90 0.10 94.44
17 Tengah Sapi 2 18.5 5 2.81 0.60 2.12 0.16 101.38
18 Tengah Sapi 3 24.0 5 4.15 0.94 0.80 0.19 145.83
19 Tengah Kambing 1 19.0 4 2.80 0.53 0.16 0.03 86.11
20 Tengah Kambing 2 19.0 5 3.60 1.57 2.40 0.30 56.16
21 Tengah Kambing 3 19.4 6 4.37 1.04 0.65 0.12 90.28
22 Tengah Ayam 1 15.0 5 3.52 0.88 0.30 0.07 138.89
23 Tengah Ayam 2 20.0 5 3.46 0.70 3.92 0.50 145.83
24 Tengah Ayam 3 24.5 4 5.24 1.22 1.23 0.20 159.72
25 Tengah Kascing 1 22.7 4 3.33 0.83 0.33 0.13 95.83
26 Tengah Kascing 2 19.8 5 4.26 0.90 1.67 0.21 138.88
27 Tengah Kascing 3 23.5 6 4.12 2.52 1.72 0.78 166.67
28 Tengah Kompos 1 19.5 5 3.86 1.08 0.63 0.14 152.78
29 Tengah Kompos 2 20.6 4 2.63 0.56 1.35 0.13 108.33
30 Tengah Kompos 3 18.0 4 4.35 1.03 0.66 0.15 131.94
31 Pangkal Sapi 1 20.5 5 2.96 0.80 0.93 0.30 188.89
32 Pangkal Sapi 2 25.0 6 5.56 1.09 2.55 0.14 222.22
33 Pangkal Sapi 3 23.5 5 4.60 1.08 0.36 0.06 125.00
34 Pangkal Kambing 1 13.6 4 1.30 0.25 0.22 0.10 58.33
35 Pangkal Kambing 2 21.0 6 4.30 0.87 2.50 0.26 162.50
36 Pangkal Kambing 3 26.0 6 5.32 1.37 0.87 0.30 187.50
37 Pangkal Ayam 1 16.5 4 2.96 0.68 0.51 0.10 80.56
38 Pangkal Ayam 2 17.0 5 2.76 0.56 0.89 0.12 141.66
39 Pangkal Ayam 3 24.5 5 4.90 1.08 0.58 0.13 152.80
40 Pangkal Kascing 1 20.8 4 4.43 1.22 0.50 0.20 94.44
41 Pangkal Kascing 2 20.5 6 3.31 0.98 1.76 0.20 175.00
42 Pangkal Kascing 3 25.5 6 4.56 0.98 0.65 1.14 129.17
43 Pangkal Kompos 1 23.0 5 3.40 0.72 0.50 0.10 159.72
44 Pangkal Kompos 2 27.8 5 2.93 0.70 1.67 0.10 97.22
45 Pangkal Kompos 3 18.0 4 3.90 1.12 0.57 0.06 83.33
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 2
The GLM Procedure
Class Level Information
Class Levels Values
posisi 3 Pangkal Tengah Ujung
pupuk 5 Ayam Kambing Kascing Kompos Sapi
kelompok 3 1 2 3
Number of Observations Read 45
Number of Observations Used 45
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 3
The GLM Procedure
Dependent Variable: TT
Sum of
Source DF Squares Mean Square F Value Pr > F
Model 16 141.7435556 8.8589722 1.01 0.4716
Error 28 244.6662222 8.7380794
Corrected Total 44 386.4097778
R-Square Coeff Var Root MSE TT Mean
0.366822 14.18287 2.956024 20.84222
Source DF Type I SS Mean Square F Value Pr > F
kelompok 2 61.74711111 30.87355556 3.53 0.0428
posisi 2 15.72844444 7.86422222 0.90 0.4180
pupuk 4 22.10088889 5.52522222 0.63 0.6436
posisi*pupuk 8 42.16711111 5.27088889 0.60 0.7671
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 4
The GLM Procedure
Dependent Variable: JD
Sum of
Source DF Squares Mean Square F Value Pr > F
Model 16 7.73333333 0.48333333 0.90 0.5783
Error 28 15.06666667 0.53809524
Corrected Total 44 22.80000000
R-Square Coeff Var Root MSE JD Mean
0.339181 14.86925 0.733550 4.933333
Source DF Type I SS Mean Square F Value Pr > F
kelompok 2 3.60000000 1.80000000 3.35 0.0498
posisi 2 0.53333333 0.26666667 0.50 0.6145
pupuk 4 1.68888889 0.42222222 0.78 0.5448
posisi*pupuk 8 1.91111111 0.23888889 0.44 0.8841
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 5
The GLM Procedure
Dependent Variable: BST
Sum of
Source DF Squares Mean Square F Value Pr > F
Model 16 17.56235556 1.09764722 1.73 0.0990
Error 28 17.76020889 0.63429317
Corrected Total 44 35.32256444
R-Square Coeff Var Root MSE BST Mean
0.497199 20.17856 0.796425 3.946889
Source DF Type I SS Mean Square F Value Pr > F
kelompok 2 12.14032444 6.07016222 9.57 0.0007
posisi 2 2.30040444 1.15020222 1.81 0.1817
pupuk 4 1.16434222 0.29108556 0.46 0.7651
posisi*pupuk 8 1.95728444 0.24466056 0.39 0.9191
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 6
The GLM Procedure
Dependent Variable: BKT
Sum of
Source DF Squares Mean Square F Value Pr > F
Model 16 2.35511556 0.14719472 1.37 0.2254
Error 28 3.00480889 0.10731460
Corrected Total 44 5.35992444
R-Square Coeff Var Root MSE BKT Mean
0.439393 33.94315 0.327589 0.965111
Source DF Type I SS Mean Square F Value Pr > F
kelompok 2 1.36299111 0.68149556 6.35 0.0053
posisi 2 0.11515111 0.05757556 0.54 0.5907
pupuk 4 0.52216889 0.13054222 1.22 0.3261
posisi*pupuk 8 0.35480444 0.04435056 0.41 0.9032
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 7
The GLM Procedure
Dependent Variable: BSA
Sum of
Source DF Squares Mean Square F Value Pr > F
Model 16 20.15085333 1.25942833 4.35 0.0003
Error 28 8.11122667 0.28968667
Corrected Total 44 28.26208000
R-Square Coeff Var Root MSE BSA Mean
0.713000 50.42712 0.538225 1.067333
Source DF Type I SS Mean Square F Value Pr > F
kelompok 2 16.70897333 8.35448667 28.84 <.0001
posisi 2 0.82972000 0.41486000 1.43 0.2558
pupuk 4 0.42236889 0.10559222 0.36 0.8318
posisi*pupuk 8 2.18979111 0.27372389 0.94 0.4967
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 8
The GLM Procedure
Dependent Variable: BKA
Sum of
Source DF Squares Mean Square F Value Pr > F
Model 16 0.67628889 0.04226806 1.30 0.2623
Error 28 0.90856889 0.03244889
Corrected Total 44 1.58485778
R-Square Coeff Var Root MSE BKA Mean
0.426719 90.87566 0.180136 0.198222
Source DF Type I SS Mean Square F Value Pr > F
kelompok 2 0.16056444 0.08028222 2.47 0.1025
posisi 2 0.03320444 0.01660222 0.51 0.6050
pupuk 4 0.22948000 0.05737000 1.77 0.1634
posisi*pupuk 8 0.25304000 0.03163000 0.97 0.4754
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 9
The GLM Procedure
Dependent Variable: LD
Sum of
Source DF Squares Mean Square F Value Pr > F
Model 16 24789.68836 1549.35552 1.21 0.3209
Error 28 35914.67257 1282.66688
Corrected Total 44 60704.36092
R-Square Coeff Var Root MSE LD Mean
0.408368 27.15370 35.81434 131.8949
Source DF Type I SS Mean Square F Value Pr > F
kelompok 2 3463.37070 1731.68535 1.35 0.2756
posisi 2 2735.18816 1367.59408 1.07 0.3579
pupuk 4 3910.54748 977.63687 0.76 0.5587
posisi*pupuk 8 14680.58201 1835.07275 1.43 0.2275
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 10
The GLM Procedure
Duncan's Multiple Range Test for TT
NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate.
Alpha 0.05
Error Degrees of Freedom 28
Error Mean Square 8.738079
Number of Means 2 3
Critical Range 2.211 2.323
Means with the same letter are not significantly different.
Duncan Grouping Mean N kelompok
A 22.240 15 3
A
B A 20.913 15 2
B
B 19.373 15 1
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 11
The GLM Procedure
Duncan's Multiple Range Test for JD
NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate.
Alpha 0.05
Error Degrees of Freedom 28
Error Mean Square 0.538095
Number of Means 2 3
Critical Range .5487 .5765
Means with the same letter are not significantly different.
Duncan Grouping Mean N kelompok
A 5.1333 15 3
A
A 5.1333 15 2
B 4.5333 15 1
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 12
The GLM Procedure
Duncan's Multiple Range Test for BST
NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate.
Alpha 0.05
Error Degrees of Freedom 28
Error Mean Square 0.634293
Number of Means 2 3
Critical Range .5957 .6259
Means with the same letter are not significantly different.
Duncan Grouping Mean N kelompok
A 4.6813 15 3
B 3.5907 15 1
B
B 3.5687 15 2
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 13
The GLM Procedure
Duncan's Multiple Range Test for BKT
NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate.
Alpha 0.05
Error Degrees of Freedom 28
Error Mean Square 0.107315
Number of Means 2 3
Critical Range .2450 .2575
Means with the same letter are not significantly different.
Duncan Grouping Mean N kelompok
A 1.2100 15 3
B 0.8640 15 1
B
B 0.8213 15 2
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 14
The GLM Procedure
Duncan's Multiple Range Test for BSA
NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate.
Alpha 0.05
Error Degrees of Freedom 28
Error Mean Square 0.289687
Number of Means 2 3
Critical Range .4026 .4230
Means with the same letter are not significantly different.
Duncan Grouping Mean N kelompok
A 1.9180 15 2
B 0.7613 15 3
B
B 0.5227 15 1
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 15
The GLM Procedure
Duncan's Multiple Range Test for BKA
NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate.
Alpha 0.05
Error Degrees of Freedom 28
Error Mean Square 0.032449
Number of Means 2 3
Critical Range .1347 .1416
Means with the same letter are not significantly different.
Duncan Grouping Mean N kelompok
A 0.26600 15 3
A
B A 0.20800 15 2
B
B 0.12067 15 1
Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 16
The GLM Procedure
Duncan's Multiple Range Test for LD
NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate.
Alpha 0.05
Error Degrees of Freedom 28
Error Mean Square 1282.667
Number of Means 2 3
Critical Range 26.79 28.15
Means with the same letter are not significantly different.
Duncan Grouping Mean N kelompok
A 142.50 15 3
A
A 132.17 15 2
A
A 121.02 15 1
Means with the same letter are not significantly different.
Duncan Grouping Mean N kelompok
A 142.50 15 3
A
A 132.17 15 2
A
A 121.02 15 1

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Btt

  • 1. Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 1 Obs posisi pupuk kelompok TT JD BST BKT BSA BKA LD 1 Ujung Sapi 1 21.0 3 4.15 1.01 0.40 0.08 113.89 2 Ujung Sapi 2 19.0 5 4.63 0.90 1.64 0.26 176.38 3 Ujung Sapi 3 24.7 6 4.98 1.19 0.54 0.17 159.72 4 Ujung Kambing 1 20.0 5 4.47 1.00 0.55 0.07 134.72 5 Ujung Kambing 2 18.5 5 3.60 0.92 0.90 0.22 155.55 6 Ujung Kambing 3 21.0 6 5.05 1.01 0.68 0.14 145.83 7 Ujung Ayam 1 21.0 5 4.37 0.98 0.82 0.12 113.89 8 Ujung Ayam 2 23.0 5 2.90 0.50 1.00 0.15 125.00 9 Ujung Ayam 3 21.5 5 5.38 1.30 1.10 0.21 161.11 10 Ujung Kascing 1 19.0 5 4.70 1.26 0.72 0.12 144.44 11 Ujung Kascing 2 19.5 5 3.20 0.70 2.60 0.15 81.94 12 Ujung Kascing 3 20.0 4 4.22 1.14 0.34 0.12 118.06 13 Ujung Kompos 1 21.0 5 3.67 0.77 0.37 0.15 158.33 14 Ujung Kompos 2 24.5 5 3.58 0.77 1.80 0.22 94.44 15 Ujung Kompos 3 19.5 5 5.08 1.13 0.67 0.22 180.56 16 Tengah Sapi 1 18.0 5 3.94 0.95 0.90 0.10 94.44 17 Tengah Sapi 2 18.5 5 2.81 0.60 2.12 0.16 101.38 18 Tengah Sapi 3 24.0 5 4.15 0.94 0.80 0.19 145.83 19 Tengah Kambing 1 19.0 4 2.80 0.53 0.16 0.03 86.11 20 Tengah Kambing 2 19.0 5 3.60 1.57 2.40 0.30 56.16 21 Tengah Kambing 3 19.4 6 4.37 1.04 0.65 0.12 90.28 22 Tengah Ayam 1 15.0 5 3.52 0.88 0.30 0.07 138.89 23 Tengah Ayam 2 20.0 5 3.46 0.70 3.92 0.50 145.83 24 Tengah Ayam 3 24.5 4 5.24 1.22 1.23 0.20 159.72 25 Tengah Kascing 1 22.7 4 3.33 0.83 0.33 0.13 95.83 26 Tengah Kascing 2 19.8 5 4.26 0.90 1.67 0.21 138.88 27 Tengah Kascing 3 23.5 6 4.12 2.52 1.72 0.78 166.67 28 Tengah Kompos 1 19.5 5 3.86 1.08 0.63 0.14 152.78 29 Tengah Kompos 2 20.6 4 2.63 0.56 1.35 0.13 108.33 30 Tengah Kompos 3 18.0 4 4.35 1.03 0.66 0.15 131.94 31 Pangkal Sapi 1 20.5 5 2.96 0.80 0.93 0.30 188.89 32 Pangkal Sapi 2 25.0 6 5.56 1.09 2.55 0.14 222.22 33 Pangkal Sapi 3 23.5 5 4.60 1.08 0.36 0.06 125.00 34 Pangkal Kambing 1 13.6 4 1.30 0.25 0.22 0.10 58.33 35 Pangkal Kambing 2 21.0 6 4.30 0.87 2.50 0.26 162.50 36 Pangkal Kambing 3 26.0 6 5.32 1.37 0.87 0.30 187.50 37 Pangkal Ayam 1 16.5 4 2.96 0.68 0.51 0.10 80.56 38 Pangkal Ayam 2 17.0 5 2.76 0.56 0.89 0.12 141.66 39 Pangkal Ayam 3 24.5 5 4.90 1.08 0.58 0.13 152.80 40 Pangkal Kascing 1 20.8 4 4.43 1.22 0.50 0.20 94.44 41 Pangkal Kascing 2 20.5 6 3.31 0.98 1.76 0.20 175.00 42 Pangkal Kascing 3 25.5 6 4.56 0.98 0.65 1.14 129.17 43 Pangkal Kompos 1 23.0 5 3.40 0.72 0.50 0.10 159.72 44 Pangkal Kompos 2 27.8 5 2.93 0.70 1.67 0.10 97.22 45 Pangkal Kompos 3 18.0 4 3.90 1.12 0.57 0.06 83.33 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 2 The GLM Procedure Class Level Information Class Levels Values posisi 3 Pangkal Tengah Ujung pupuk 5 Ayam Kambing Kascing Kompos Sapi kelompok 3 1 2 3
  • 2. Number of Observations Read 45 Number of Observations Used 45 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 3 The GLM Procedure Dependent Variable: TT Sum of Source DF Squares Mean Square F Value Pr > F Model 16 141.7435556 8.8589722 1.01 0.4716 Error 28 244.6662222 8.7380794 Corrected Total 44 386.4097778 R-Square Coeff Var Root MSE TT Mean 0.366822 14.18287 2.956024 20.84222 Source DF Type I SS Mean Square F Value Pr > F kelompok 2 61.74711111 30.87355556 3.53 0.0428 posisi 2 15.72844444 7.86422222 0.90 0.4180 pupuk 4 22.10088889 5.52522222 0.63 0.6436 posisi*pupuk 8 42.16711111 5.27088889 0.60 0.7671 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 4 The GLM Procedure Dependent Variable: JD Sum of Source DF Squares Mean Square F Value Pr > F Model 16 7.73333333 0.48333333 0.90 0.5783 Error 28 15.06666667 0.53809524 Corrected Total 44 22.80000000 R-Square Coeff Var Root MSE JD Mean 0.339181 14.86925 0.733550 4.933333 Source DF Type I SS Mean Square F Value Pr > F
  • 3. kelompok 2 3.60000000 1.80000000 3.35 0.0498 posisi 2 0.53333333 0.26666667 0.50 0.6145 pupuk 4 1.68888889 0.42222222 0.78 0.5448 posisi*pupuk 8 1.91111111 0.23888889 0.44 0.8841 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 5 The GLM Procedure Dependent Variable: BST Sum of Source DF Squares Mean Square F Value Pr > F Model 16 17.56235556 1.09764722 1.73 0.0990 Error 28 17.76020889 0.63429317 Corrected Total 44 35.32256444 R-Square Coeff Var Root MSE BST Mean 0.497199 20.17856 0.796425 3.946889 Source DF Type I SS Mean Square F Value Pr > F kelompok 2 12.14032444 6.07016222 9.57 0.0007 posisi 2 2.30040444 1.15020222 1.81 0.1817 pupuk 4 1.16434222 0.29108556 0.46 0.7651 posisi*pupuk 8 1.95728444 0.24466056 0.39 0.9191 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 6 The GLM Procedure Dependent Variable: BKT Sum of Source DF Squares Mean Square F Value Pr > F Model 16 2.35511556 0.14719472 1.37 0.2254 Error 28 3.00480889 0.10731460 Corrected Total 44 5.35992444 R-Square Coeff Var Root MSE BKT Mean 0.439393 33.94315 0.327589 0.965111 Source DF Type I SS Mean Square F Value Pr > F
  • 4. kelompok 2 1.36299111 0.68149556 6.35 0.0053 posisi 2 0.11515111 0.05757556 0.54 0.5907 pupuk 4 0.52216889 0.13054222 1.22 0.3261 posisi*pupuk 8 0.35480444 0.04435056 0.41 0.9032 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 7 The GLM Procedure Dependent Variable: BSA Sum of Source DF Squares Mean Square F Value Pr > F Model 16 20.15085333 1.25942833 4.35 0.0003 Error 28 8.11122667 0.28968667 Corrected Total 44 28.26208000 R-Square Coeff Var Root MSE BSA Mean 0.713000 50.42712 0.538225 1.067333 Source DF Type I SS Mean Square F Value Pr > F kelompok 2 16.70897333 8.35448667 28.84 <.0001 posisi 2 0.82972000 0.41486000 1.43 0.2558 pupuk 4 0.42236889 0.10559222 0.36 0.8318 posisi*pupuk 8 2.18979111 0.27372389 0.94 0.4967 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 8 The GLM Procedure Dependent Variable: BKA Sum of Source DF Squares Mean Square F Value Pr > F Model 16 0.67628889 0.04226806 1.30 0.2623 Error 28 0.90856889 0.03244889 Corrected Total 44 1.58485778 R-Square Coeff Var Root MSE BKA Mean 0.426719 90.87566 0.180136 0.198222 Source DF Type I SS Mean Square F Value Pr > F
  • 5. kelompok 2 0.16056444 0.08028222 2.47 0.1025 posisi 2 0.03320444 0.01660222 0.51 0.6050 pupuk 4 0.22948000 0.05737000 1.77 0.1634 posisi*pupuk 8 0.25304000 0.03163000 0.97 0.4754 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 9 The GLM Procedure Dependent Variable: LD Sum of Source DF Squares Mean Square F Value Pr > F Model 16 24789.68836 1549.35552 1.21 0.3209 Error 28 35914.67257 1282.66688 Corrected Total 44 60704.36092 R-Square Coeff Var Root MSE LD Mean 0.408368 27.15370 35.81434 131.8949 Source DF Type I SS Mean Square F Value Pr > F kelompok 2 3463.37070 1731.68535 1.35 0.2756 posisi 2 2735.18816 1367.59408 1.07 0.3579 pupuk 4 3910.54748 977.63687 0.76 0.5587 posisi*pupuk 8 14680.58201 1835.07275 1.43 0.2275 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 10 The GLM Procedure Duncan's Multiple Range Test for TT NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate. Alpha 0.05 Error Degrees of Freedom 28 Error Mean Square 8.738079 Number of Means 2 3 Critical Range 2.211 2.323 Means with the same letter are not significantly different. Duncan Grouping Mean N kelompok
  • 6. A 22.240 15 3 A B A 20.913 15 2 B B 19.373 15 1 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 11 The GLM Procedure Duncan's Multiple Range Test for JD NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate. Alpha 0.05 Error Degrees of Freedom 28 Error Mean Square 0.538095 Number of Means 2 3 Critical Range .5487 .5765 Means with the same letter are not significantly different. Duncan Grouping Mean N kelompok A 5.1333 15 3 A A 5.1333 15 2 B 4.5333 15 1 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 12 The GLM Procedure Duncan's Multiple Range Test for BST NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate. Alpha 0.05 Error Degrees of Freedom 28 Error Mean Square 0.634293 Number of Means 2 3 Critical Range .5957 .6259 Means with the same letter are not significantly different.
  • 7. Duncan Grouping Mean N kelompok A 4.6813 15 3 B 3.5907 15 1 B B 3.5687 15 2 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 13 The GLM Procedure Duncan's Multiple Range Test for BKT NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate. Alpha 0.05 Error Degrees of Freedom 28 Error Mean Square 0.107315 Number of Means 2 3 Critical Range .2450 .2575 Means with the same letter are not significantly different. Duncan Grouping Mean N kelompok A 1.2100 15 3 B 0.8640 15 1 B B 0.8213 15 2 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 14 The GLM Procedure Duncan's Multiple Range Test for BSA NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate. Alpha 0.05 Error Degrees of Freedom 28 Error Mean Square 0.289687 Number of Means 2 3 Critical Range .4026 .4230
  • 8. Means with the same letter are not significantly different. Duncan Grouping Mean N kelompok A 1.9180 15 2 B 0.7613 15 3 B B 0.5227 15 1 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 15 The GLM Procedure Duncan's Multiple Range Test for BKA NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate. Alpha 0.05 Error Degrees of Freedom 28 Error Mean Square 0.032449 Number of Means 2 3 Critical Range .1347 .1416 Means with the same letter are not significantly different. Duncan Grouping Mean N kelompok A 0.26600 15 3 A B A 0.20800 15 2 B B 0.12067 15 1 Data Pengamatan Acara 2 17:36 Thursday, April 26, 2013 16 The GLM Procedure Duncan's Multiple Range Test for LD NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate. Alpha 0.05 Error Degrees of Freedom 28 Error Mean Square 1282.667 Number of Means 2 3 Critical Range 26.79 28.15
  • 9. Means with the same letter are not significantly different. Duncan Grouping Mean N kelompok A 142.50 15 3 A A 132.17 15 2 A A 121.02 15 1
  • 10. Means with the same letter are not significantly different. Duncan Grouping Mean N kelompok A 142.50 15 3 A A 132.17 15 2 A A 121.02 15 1