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1 EXAMINE VARIABLES=nc228 BY sexcntry /PLOT BOXPLOT HISTOGRAM NPPLOT /COMPARE GROUPS /STATISTICS DESCRIPTIVES /CINTERVAL 95 /MISSING LISTWISE /NOTOTAL. Explore Notes Output Created Comments Input Missing Value Handling Syntax Resources Data Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used Processor Time Elapsed Time 28-MAR :19:56 D:\NORA\NORA Main File.sav DataSet1 filter_$ sexcntry=4 or sexcntry=6 (FILTER) <none> <none> 468 User-defined missing values for dependent variables are treated as missing. Statistics are based on cases with no missing values for any dependent variable or factor used. EXAMINE VARIABLES=nc228 BY sexcntry /PLOT BOXPLOT HISTOGRAM NPPLOT /COMPARE GROUPS /STATISTICS DESCRIPTIVES /CINTERVAL 95 /MISSING LISTWISE /NOTOTAL. ::,7 ::,7 [DataSet1] D:\NORA\NORA Main File.sav sexcntry Sex according to country Page 1

2 Case Processing Summary nc228 HAND GRIP (N) sexcntry Sex according to country 4 Sweden, female 6 Denmark, female Cases Valid Missing Total N Percent N Percent N Percent ,5% 93 44,5% 29 1,% 29 8,7% 5 19,3% 259 1,% Descriptives sexcntry Sex according to country Statistic Std. Error nc228 HAND GRIP (N) 4 Sweden, female Mean 26,9 6,9 95% Confidence Interval for Mean 5% Trimmed Mean Median Variance Std. Deviation Minimum Maximum Range Interquartile Range Skewness Kurtosis 6 Denmark, female Mean 95% Confidence Interval for Mean 5% Trimmed Mean Median Variance Std. Deviation Minimum Maximum Range Interquartile Range Skewness Kurtosis Tests of Normality Lower Bound Upper Bound Lower Bound Upper Bound 248,18 271,99 257,93 261, 4188,27 64, ,54,225 1,28, ,82 5, ,61 267,2 254,55 255, 5599,553 74, ,196,168 17,419,335 nc228 HAND GRIP (N) sexcntry Sex according to country 4 Sweden, female 6 Denmark, female Kolmogorov-Smirnov a Shapiro-Wilk Statistic df Sig. Statistic df Sig.,51 116,2 *, ,56,9 29,,854 29, *. This is a lower bound of the true significance. a. Lilliefors Significance Correction nc228 HAND GRIP (N) Histograms Page 2

3 Histogram for sexcntry= Sweden, female 25 Mean = 26,9 Std. Dev. = 64,715 N = Frequency HAND GRIP (N) Page 3

4 Histogram for sexcntry= Denmark, female 6 Mean = 256,82 Std. Dev. = 74,83 N = Frequency HAND GRIP (N) Normal Q-Q Plots Page 4

5 Normal Q-Q Plot of HAND GRIP (N) for sexcntry= Sweden, female 4 Expected Normal Observed Value Page 5

6 Normal Q-Q Plot of HAND GRIP (N) for sexcntry= Denmark, female 1, 7,5 Expected Normal 5, 2,5 957, -2, Observed Value Detrended Normal Q-Q Plots Page 6

7 Detrended Normal Q-Q Plot of HAND GRIP (N) for sexcntry= Sweden, female 1,5 1, Dev from Normal,5, -, Observed Value Page 7

8 Detrended Normal Q-Q Plot of HAND GRIP (N) for sexcntry= Denmark, female 6 4 Dev from Normal Observed Value Page 8

9 HAND GRIP (N) Sweden, female Sex according to country Denmark, female T-TEST GROUPS=sexcntry(4 6) /MISSING=ANALYSIS /VARIABLES=nc228 /CRITERIA=CI(.95). T-Test Page 9

10 Output Created Comments Input Missing Value Handling Syntax Resources Data Notes Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used Processor Time Elapsed Time 28-MAR :21:6 D:\NORA\NORA Main File.sav DataSet1 filter_$ sexcntry=4 or sexcntry=6 (FILTER) <none> <none> 468 User defined missing values are treated as missing. Statistics for each analysis are based on the cases with no missing or out-ofrange data for any variable in the analysis. T-TEST GROUPS=sexcntry(4 6) /MISSING=ANALYSIS /VARIABLES=nc228 /CRITERIA=CI(.95). ::,2 ::,2 [DataSet1] D:\NORA\NORA Main File.sav Group Statistics nc228 HAND GRIP (N) sexcntry Sex according to Std. Error country N Mean Std. Deviation Mean 4 Sweden, female ,9 64,715 6,9 6 Denmark, female ,82 74,83 5,176 nc228 HAND GRIP (N) Equal variances assumed Levene's Test for Equality of Variances Independent Samples Test F Sig. t df Sig. (2-tailed) t-test for Equality of Means Mean Difference Std. Error Difference 95% Confidence Interval of the Difference,27,87, ,693 3,268 8,266-12,994 19,53 Lower Upper Equal variances not assumed, ,549,681 3,268 7,931-12,346 18,883 USE ALL. COMPUTE filter_$=(sexcntry=4 or sexcntry=6 and $casenum ~= 957). VARIABLE LABELS filter_$ 'sexcntry=4 or sexcntry=6 and $casenum ~= 957 (FILTER)'. VALUE LABELS filter_$ 'Not Selected' 1 'Selected'. FORMATS filter_$ (f1.). FILTER BY filter_$. EXECUTE. EXAMINE VARIABLES=nc228 BY sexcntry /PLOT BOXPLOT HISTOGRAM NPPLOT Page 1

11 /COMPARE GROUPS /STATISTICS DESCRIPTIVES /CINTERVAL 95 /MISSING LISTWISE /NOTOTAL. Explore Output Created Comments Input Notes Data Active Dataset Filter 28-MAR :22:1 D:\NORA\NORA Main File.sav DataSet1 filter_$ sexcntry=4 or sexcntry=6 and $casenum ~= 957 (FILTER) Missing Value Handling Syntax Resources Weight Split File N of Rows in Working Data File Definition of Missing Cases Used Processor Time Elapsed Time <none> <none> 467 User-defined missing values for dependent variables are treated as missing. Statistics are based on cases with no missing values for any dependent variable or factor used. EXAMINE VARIABLES=nc228 BY sexcntry /PLOT BOXPLOT HISTOGRAM NPPLOT /COMPARE GROUPS /STATISTICS DESCRIPTIVES /CINTERVAL 95 /MISSING LISTWISE /NOTOTAL. ::,78 ::,75 [DataSet1] D:\NORA\NORA Main File.sav sexcntry Sex according to country Page 11

12 Case Processing Summary nc228 HAND GRIP (N) sexcntry Sex according to country 4 Sweden, female 6 Denmark, female Cases Valid Missing N Percent N Percent ,5% 93 44,5% 28 8,6% 5 19,4% Case Processing Summary nc228 HAND GRIP (N) sexcntry Sex according to country 4 Sweden, female 6 Denmark, female Descriptives Cases Total N Percent 29 1,% 258 1,% sexcntry Sex according to country Statistic Std. Error nc228 HAND GRIP (N) 4 Sweden, female Mean 26,9 6,9 95% Confidence Interval for Mean 5% Trimmed Mean Median Variance Std. Deviation Minimum Maximum Range Interquartile Range Skewness Kurtosis 6 Denmark, female Mean 95% Confidence Interval for Mean 5% Trimmed Mean Median Variance Std. Deviation Minimum Maximum Range Interquartile Range Skewness Kurtosis Lower Bound Upper Bound Lower Bound Upper Bound 248,18 271,99 257,93 261, 4188,27 64, ,54,225 1,28, ,1 4, ,4 262,63 253,98 254,5 3975,75 63, ,36,169 1,339,336 Page 12

13 nc228 HAND GRIP (N) sexcntry Sex according to country 4 Sweden, female 6 Denmark, female Tests of Normality Kolmogorov-Smirnov a Shapiro-Wilk Statistic df Sig. Statistic df Sig.,51 116,2 *, ,56,59 28,8,98 28,4 *. This is a lower bound of the true significance. a. Lilliefors Significance Correction nc228 HAND GRIP (N) Histograms Histogram for sexcntry= Sweden, female 25 Mean = 26,9 Std. Dev. = 64,715 N = Frequency HAND GRIP (N) Page 13

14 Histogram for sexcntry= Denmark, female 4 Mean = 254,1 Std. Dev. = 63,53 N = 28 3 Frequency HAND GRIP (N) Normal Q-Q Plots Page 14

15 Normal Q-Q Plot of HAND GRIP (N) for sexcntry= Sweden, female 4 Expected Normal Observed Value Page 15

16 Normal Q-Q Plot of HAND GRIP (N) for sexcntry= Denmark, female 4 2 Expected Normal Observed Value Detrended Normal Q-Q Plots Page 16

17 Detrended Normal Q-Q Plot of HAND GRIP (N) for sexcntry= Sweden, female 1,5 1, Dev from Normal,5, -, Observed Value Page 17

18 Detrended Normal Q-Q Plot of HAND GRIP (N) for sexcntry= Denmark, female 1,,5 Dev from Normal, -,5-1, Observed Value Page 18

19 HAND GRIP (N) Sweden, female Sex according to country Denmark, female T-TEST GROUPS=sexcntry(4 6) /MISSING=ANALYSIS /VARIABLES=nc228 /CRITERIA=CI(.95). T-Test Page 19

20 Output Created Comments Input Missing Value Handling Syntax Resources Data Notes Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used Processor Time Elapsed Time 28-MAR :22:22 D:\NORA\NORA Main File.sav DataSet1 filter_$ sexcntry=4 or sexcntry=6 and $casenum ~= 957 (FILTER) <none> <none> 467 User defined missing values are treated as missing. Statistics for each analysis are based on the cases with no missing or out-ofrange data for any variable in the analysis. T-TEST GROUPS=sexcntry(4 6) /MISSING=ANALYSIS /VARIABLES=nc228 /CRITERIA=CI(.95). ::,3 ::,3 [DataSet1] D:\NORA\NORA Main File.sav Group Statistics nc228 HAND GRIP (N) sexcntry Sex according to country N Mean Std. Deviation 4 Sweden, female ,9 64,715 6 Denmark, female ,1 63,53 Group Statistics nc228 HAND GRIP (N) sexcntry Sex according to country 4 Sweden, female 6 Denmark, female Std. Error Mean 6,9 4,372 Page 2

21 nc228 HAND GRIP (N) Equal variances assumed Levene's Test for Equality of Variances Independent Samples Test F Sig. t df Sig. (2-tailed) t-test for Equality of Means Mean Difference Std. Error Difference 95% Confidence Interval of the Difference,544,461, ,411 6,72 7,376-8,439 2,583 Lower Upper Equal variances not assumed, ,756,415 6,72 7,431-8,569 2,712 Page 21

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