Uji validitas dan reliabilitas stres putaran I

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1 57 Uji validitas dan reliabilitas stres putaran I Reliability ****** Me t h od 1 (space saver) will be used for this a n alys i s ****** R E L I A B I L I T Y A N A L Y S I S S C A L E (A L P H A) Item- tota l St atisti cs Scale Scale Corrected Mean Variance Item- Alpha if Item if Item Total i f Item Deleted Dele t ed Correlation Deleted STRES S TRES STRE S STRES STRESS STRE S STRES STRESS STRE S STRE S STRES S TRES STRE S STRES STRE S STRE S STRES STRE S STRES S TRES STRES S TRES STRE S STRES Reliability Coeff i cients N o f Case s N o f Items 24 Al pha = Gugur = 7

2 58 Uji validitas dan reliabilitas stres putaran II Reliability ****** Me thod 1 (spac e saver ) will be use d f or thi s anal ysis ****** R E L I A B I L I T Y A N A L Y S I S S C A L E (A L P H A) Item- t ot a l Statistics Scal e Sc a l e Correct e d Mea n Vari a nce I t em- Al pha if I t em if Item Tot al if Item Delet e d Deleted Corre l ation De leted STRE S STRES STRES STRE S STRE S STRESS STRES S TRES STRE S STRES S TRES STRES STRES STRE S STRE S STRES STRES Reliability Coeffic i ents N of Ca ses N o f Items 1 7 Alpha =. 8999

3 59 Hasil Uji validitas dan reliabilitas citra tubuh putaran I Reliability * ***** Me t hod 1 (space saver) will b e used f or t h i s a n alys i s ****** R E L I A B I L I T Y A N A L Y S I S S C A L E (A L P H A) Item- t otal Statistic s Scale Scale Corrected Mean Variance Item- Al pha if Item if Item Total i f I tem Delete d Deleted Co rrel ation Deleted CI TRA CI TRA CITRA CITRA CI TRA CITRA CITRA CITRA CITRA CITRA CI TRAll CI TRA CITRA CITRA CI TRA CITRA CITRA CI TRA CITRA CITRA CI TRA CI TRA CITRA CITRA CI TRA CITRA CITRA CITRA CITRA CI TRA CI TRA CITRA

4 60 Reliabilit y Coefficients N o f Cas e s N o f Items 32 Alpha Gugur 11

5 61 Uji validitas dan reliabilitas citra tubuh putaran II Reliability * ***** Me t hod 1 (space saver) will be used f or this a n alys i s ****** R E L I A B I L I T Y A N A L Y S I S S C A L E (A L P H A) I tem- total Statistics Scal e Scale Corrected Mean Variance Item- Alpha if Item if Item Tot a l if Item Deleted Delet ed Correlation Deleted CI TRA CITRA CITRA CI TRA CITRA CITRA CI TRA CITRA CITRA CI TRA CI TRA CITRA CITRA CI TRA CITRA CITRA CI TRA CITRA CITRA CI TRA CI TRA Reliability Coefficient s N o f Cases N o f I tems 21 Al pha =

6 62 Normalitas Explore Case Processing Summary Cases Valid Missinq Total N Percent N Percent N Percent Citra tubuh % 0.0% % Kecenderungan stres % 0.0% % Descriptives Statistic Std. Error Citra tubuh Mean % Confidence Lower Bound Interval for Mean Upper Bound % Trimmed Mean Median Variance Std. Deviation Minimum 33 Maximum 66 Range 33 lnterquartile Range Skewness Kurtosis Kecenderungan stres Mean % Confidence Lower Bound Interval for Mean Upper Bound % Trimmed Mean Median Variance Std. Deviation Minimum 30 Maximum 64 Range 34 lnterquartile Range Skewness Kurtosis

7 63 Tests of Normality Kolmoqorov-Smirnov 3 Statistic dl Citra tubuh Kecenderungan stres *.This 1s a lower bound of the true s1gn1f1cance. a. Lilliefors Significance Correction Siq..200*.200* Shapiro-Wilk Statistic dl Siq

8 64 Uji linieritas Means Case Processing Summary Kecenderungan stres *Citra tubuh Cases Included Excluded Total N Percent N Percent N Percent % 0.0% % ANOVA Table Sum of Squares df Mean Square F Sio. 1\.ecenaerungan '?etween (vomolneoj t t7 stres * Citra tubuh Groups Linearity t Deviation from Linearity Within Groups t t Total Measures of Association Kecenderungan stres *Citra tubuh R R Squared Eta Eta Squared

9 65 Uji korelasi Correlations Correlations Kecenderu Citra tubuh nqan stres Citra tubuh Pearson Correlation * Sig. (1-tailed).001 N Kecenderungan stres Pearson Correlation -.498* Sig. (1-tailed).001 N **. Correlation is significant at the 0.01 level (1-tailed).

10 66 Frequencies Frequency Table usia Cumulative Frequency Percent Valid Percent Percent Valid Total Kategori citra tubuh Cumulative Frequency Percent Valid Percent Percent Valid Sangat rendah Rendah Sedang Tinggi Total Kategori kecenderungan stres Cumulative Frequency Percent Valid Percent Percent Valid Rendah Sedang Tinggi Sangat tinggi Total

11 67 Cross tabs Kategori citra tubuh * Kategori kecenderungan stres Crosstabulation Kateqori kecenderunqan stres Rendah Sedanq Tinqqi Sanqat tinqqi Total Kategori Sangat rendah Count citra tubuh %of Total.0%.0% 2.5% 2.5% 5.0% Rendah Count %of Total.0% 25.0% 12.5% 7.5% 45.0% Sedang Count %of Total 5.0% 17.5% 12.5% 2.5% 37.5% Tinggi Count %of Total 5.0% 7.5%.0%.0% 12.5% Total Count %of Total 10.0% 50.0% 27.5% 12.5% 100.0% Cross tabs Kategori citra tubuh *usia Crosstabulation Total Kategori Sangat rendah Count citra tubuh %of Total 2.5% 2.5%.0%.0% 5.0% Rendah Count usia %of Total 12.5% 7.5% 15.0% 10.0% 45.0% Sedang Count %of Total 2.5% 5.0% 27.5% 2.5% 37.5% Tinggi Count %of Total.0% 2.5% 7.5% 2.5% 12.5% Total Count %of Total 17.5% 17.5% 50.0% 15.0% 100.0%

12 68 Kategori kecenderungan stres *usia Crosstabulation Total Kategori Rendah Count kecenderungan %of Total.0%.0% 10.0%.0% 10.0% stres Sedang Count usia %of Total 2.5% 5.0% 30.0% 12.5% 50.0% Tinggi Count %of Total 5.0% 10.0% 10.0% 2.5% 27.5% Sangat tinggi Count %of Total 10.0% 2.5%.0%.0% 12.5% Total Count %of Total 17.5% 17.5% 50.0% 15.0% 100.0%

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