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NEW FILE.
DATASET NAME DataSet1 WINDOW=FRONT.
ONEWAY attitude BY department
/MISSING ANALYSIS
/POSTHOC=SCHEFFE ALPHA(0.05).
Oneway
Notes
Output Created 04-SEP-2013 15:15:58
Comments
Input
Active Dataset DataSet1
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working
Data File
48
Missing Value Handling
Definition of Missing
User-defined missing values are
treated as missing.
Cases Used
Statistics for each analysis are based
on cases with no missing data for any
variable in the analysis.
Syntax
ONEWAY attitude BY department
/MISSING ANALYSIS
/POSTHOC=SCHEFFE
ALPHA(0.05).
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.06
[DataSet1]
ANOVA
attitude
Sum of
Squares
df Mean
Square
F Sig.
Between Groups .563 3 .188 .448 .720
Within Groups 18.417 44 .419
Total 18.979 47
Post Hoc Tests
Multiple Comparisons
Dependent Variable: attitude
Scheffe
(I)
department
(J) department Mean
Difference (I-
J)
Std.
Error
Sig. 95% Confidence Interval
Lower Bound Upper Bound
as
it -.16667 .26412 .940 -.9344 .6011
management -.16667 .26412 .940 -.9344 .6011
education .08333 .26412 .992 -.6844 .8511
it
as .16667 .26412 .940 -.6011 .9344
management .00000 .26412 1.000 -.7677 .7677
education .25000 .26412 .826 -.5177 1.0177
management
as .16667 .26412 .940 -.6011 .9344
it .00000 .26412 1.000 -.7677 .7677
education .25000 .26412 .826 -.5177 1.0177
education
as -.08333 .26412 .992 -.8511 .6844
it -.25000 .26412 .826 -1.0177 .5177
management -.25000 .26412 .826 -1.0177 .5177
Homogeneous Subsets
attitude
Scheffea
department N Subset for
alpha = 0.05
1
education 12 2.8333
as 12 2.9167
it 12 3.0833
management 12 3.0833
Sig. .826
Means for groups in homogeneous subsets
are displayed.
a. Uses Harmonic Mean Sample Size =
12.000.
NEW FILE.
DATASET NAME DataSet2 WINDOW=FRONT.
ONEWAY attitude BY gender
/MISSING ANALYSIS
/POSTHOC=SCHEFFE ALPHA(0.05).
Oneway
Notes
Output Created 04-SEP-2013 15:26:02
Comments
Input
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working
Data File
40
Missing Value Handling
Definition of Missing
User-defined missing values are
treated as missing.
Cases Used
Statistics for each analysis are based
on cases with no missing data for any
variable in the analysis.
Syntax
ONEWAY attitude BY gender
/MISSING ANALYSIS
/POSTHOC=SCHEFFE
ALPHA(0.05).
Resources
Processor Time 00:00:00.02
Elapsed Time 00:00:00.01
[DataSet2]
Warnings
Post hoc tests are not performed for attitude because there are fewer than three groups.
ANOVA
attitude
Sum of
Squares
df Mean
Square
F Sig.
Between Groups 3.025 1 3.025 8.360 .006
Within Groups 13.750 38 .362
Total 16.775 39
T-TEST GROUPS=gender(1 2)
/MISSING=ANALYSIS
/VARIABLES=attitude
/CRITERIA=CI(.95).
T-Test
Notes
Output Created 04-SEP-2013 15:46:38
Comments
Input
Active Dataset DataSet2
Filter <none>
Weight <none>
Split File <none>
N of Rows in Working
Data File
40
Missing Value Handling
Definition of Missing
User defined missing values are
treated as missing.
Cases Used
Statistics for each analysis are based
on the cases with no missing or out-
of-range data for any variable in the
analysis.
Syntax
T-TEST GROUPS=gender(1 2)
/MISSING=ANALYSIS
/VARIABLES=attitude
/CRITERIA=CI(.95).
Resources
Processor Time 00:00:00.00
Elapsed Time 00:00:00.01
[DataSet2]
Group Statistics
gende
r
N Mean Std.
Deviation
Std. Error
Mean
attitud
e
female 20 2.8000 .61559 .13765
male 20 3.3500 .58714 .13129
Independent Samples Test
Levene's Test for Equality of
Variances
t-test for Equality of
Means
F Sig. t df
attitud
e
Equal variances assumed .009 .926 -2.891 38
Equal variances not
assumed
-2.891 37.915
Independent Samples Test
t-test for Equality of Means
Sig. (2-tailed) Mean
Difference
Std. Error
Difference
95%
Confidence
Interval of the
Difference
Lower
attitud
e
Equal variances assumed .006 -.55000 .19022 -.93508
Equal variances not
assumed
.006 -.55000 .19022 -.93511
Independent Samples Test
t-test for Equality of Means
95% Confidence Interval of the
Difference
Upper
attitude
Equal variances assumed -.16492
Equal variances not assumed -.16489

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Output

  • 1. NEW FILE. DATASET NAME DataSet1 WINDOW=FRONT. ONEWAY attitude BY department /MISSING ANALYSIS /POSTHOC=SCHEFFE ALPHA(0.05). Oneway Notes Output Created 04-SEP-2013 15:15:58 Comments Input Active Dataset DataSet1 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 48 Missing Value Handling Definition of Missing User-defined missing values are treated as missing. Cases Used Statistics for each analysis are based on cases with no missing data for any variable in the analysis. Syntax ONEWAY attitude BY department /MISSING ANALYSIS /POSTHOC=SCHEFFE ALPHA(0.05). Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.06 [DataSet1]
  • 2. ANOVA attitude Sum of Squares df Mean Square F Sig. Between Groups .563 3 .188 .448 .720 Within Groups 18.417 44 .419 Total 18.979 47 Post Hoc Tests Multiple Comparisons Dependent Variable: attitude Scheffe (I) department (J) department Mean Difference (I- J) Std. Error Sig. 95% Confidence Interval Lower Bound Upper Bound as it -.16667 .26412 .940 -.9344 .6011 management -.16667 .26412 .940 -.9344 .6011 education .08333 .26412 .992 -.6844 .8511 it as .16667 .26412 .940 -.6011 .9344 management .00000 .26412 1.000 -.7677 .7677 education .25000 .26412 .826 -.5177 1.0177 management as .16667 .26412 .940 -.6011 .9344 it .00000 .26412 1.000 -.7677 .7677 education .25000 .26412 .826 -.5177 1.0177 education as -.08333 .26412 .992 -.8511 .6844 it -.25000 .26412 .826 -1.0177 .5177 management -.25000 .26412 .826 -1.0177 .5177
  • 3. Homogeneous Subsets attitude Scheffea department N Subset for alpha = 0.05 1 education 12 2.8333 as 12 2.9167 it 12 3.0833 management 12 3.0833 Sig. .826 Means for groups in homogeneous subsets are displayed. a. Uses Harmonic Mean Sample Size = 12.000.
  • 4. NEW FILE. DATASET NAME DataSet2 WINDOW=FRONT. ONEWAY attitude BY gender /MISSING ANALYSIS /POSTHOC=SCHEFFE ALPHA(0.05). Oneway Notes Output Created 04-SEP-2013 15:26:02 Comments Input Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 40 Missing Value Handling Definition of Missing User-defined missing values are treated as missing. Cases Used Statistics for each analysis are based on cases with no missing data for any variable in the analysis. Syntax ONEWAY attitude BY gender /MISSING ANALYSIS /POSTHOC=SCHEFFE ALPHA(0.05). Resources Processor Time 00:00:00.02 Elapsed Time 00:00:00.01 [DataSet2] Warnings Post hoc tests are not performed for attitude because there are fewer than three groups.
  • 5. ANOVA attitude Sum of Squares df Mean Square F Sig. Between Groups 3.025 1 3.025 8.360 .006 Within Groups 13.750 38 .362 Total 16.775 39 T-TEST GROUPS=gender(1 2) /MISSING=ANALYSIS /VARIABLES=attitude /CRITERIA=CI(.95). T-Test Notes Output Created 04-SEP-2013 15:46:38 Comments Input Active Dataset DataSet2 Filter <none> Weight <none> Split File <none> N of Rows in Working Data File 40 Missing Value Handling Definition of Missing User defined missing values are treated as missing. Cases Used Statistics for each analysis are based on the cases with no missing or out- of-range data for any variable in the analysis.
  • 6. Syntax T-TEST GROUPS=gender(1 2) /MISSING=ANALYSIS /VARIABLES=attitude /CRITERIA=CI(.95). Resources Processor Time 00:00:00.00 Elapsed Time 00:00:00.01 [DataSet2] Group Statistics gende r N Mean Std. Deviation Std. Error Mean attitud e female 20 2.8000 .61559 .13765 male 20 3.3500 .58714 .13129 Independent Samples Test Levene's Test for Equality of Variances t-test for Equality of Means F Sig. t df attitud e Equal variances assumed .009 .926 -2.891 38 Equal variances not assumed -2.891 37.915 Independent Samples Test t-test for Equality of Means Sig. (2-tailed) Mean Difference Std. Error Difference 95% Confidence Interval of the Difference Lower attitud e Equal variances assumed .006 -.55000 .19022 -.93508 Equal variances not assumed .006 -.55000 .19022 -.93511 Independent Samples Test
  • 7. t-test for Equality of Means 95% Confidence Interval of the Difference Upper attitude Equal variances assumed -.16492 Equal variances not assumed -.16489