HASIL PENELITIAN BERUPA OUTPUT SPSS

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1 VARIABEL INDEPENDEN HASIL PENELITIAN BERUPA OUTPUT SPSS 1. RATA-RATA ASUPAN ENERGI UJI NORMALITAS DATA Rata2AsupanE % 0.0% % Descriptives Rata2AsupanE Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum 748 Maximum 2319 Range 1572 Interquartile Range 499 Skewness Kurtosis

2 c) Uji Kolmogorov-Smirnov df Sig. df Sig. Rata2AsupanE * *. This is a lower bound of the true significance. 2. RATA-RATA ASUPAN PROTEIN Rata2AsupanP % 0.0% %

3 Descriptives Rata2AsupanP Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum 21.2 Maximum Range 85.8 Interquartile Range 39.8 Skewness Kurtosis c) Uji Kolmogorov-Smirnov df Sig. df Sig. Rata2AsupanP RATA-RATA ASUPAN LEMAK

4 Rata2AsupanL % 0.0% % Descriptives Rata2AsupanL Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum 11.4 Maximum Range 94.2 Interquartile Range 21.4 Skewness Kurtosis c) Uji Kolmogorov-Smirnov df Sig. df Sig. Rata2AsupanL * *. This is a lower bound of the true significance.

5 4. RATA-RATA ASUPAN KARBOHIDRAT Rata2AsupanKH % 0.0% % Descriptives Rata2AsupanKH Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum Maximum Range Interquartile Range 74.9 Skewness Kurtosis

6 c) Uji Kolmogorov-Smirnov df Sig. df Sig. Rata2AsupanKH * *. This is a lower bound of the true significance. 5. RATA-RATA ASUPAN SERAT Rata2AsupanSe % 0.0% %

7 Descriptives Rata2AsupanSe Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum 4.5 Maximum 23.6 Range 19.1 Interquartile Range 6.1 Skewness Kurtosis c) Uji Kolmogorov Smirnov df Sig. df Sig. Rata2AsupanSe RATA-RATA STATUS GIZI (IMT)

8 IMT % 0.0% % Descriptives IMT Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum 16.2 Maximum 31.2 Range 15.0 Interquartile Range 3.4 Skewness Kurtosis c) Uji Kolmogorov Smirnov df Sig. df Sig. IMT

9 7. RATA-RATA AKTIVITAS FISIK RatarataAktivitasFisik % 0.0% % Descriptives RatarataAktivitasFisik Lower Bound Upper Bound % Trimmed Median Variance.010 Std. Deviation Minimum 1.43 Maximum 1.93 Range.50 Interquartile Range.14 Skewness Kurtosis

10 c) Uji Kolmogorov-Smirnov Df Sig. df Sig. RatarataAktivitasFisik * *. This is a lower bound of the true significance. DEPENDEN : KADAR KOLESTEROL TOTAL KadarKolesterolTotal % 0.0% %

11 Descriptives KadarKolesterolTotal % Confidence Interval for Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum Maximum Range Interquartile Range 53.8 Skewness Kurtosis c) Uji Kolmogorov-Smirnov Df Sig. df Sig. KadarKolesterolTotal * *. This is a lower bound of the true significance. No Variabel Grafik Skewness Uji Kolmogorov- KESIMPULAN Histogram Smirnov 1 Asupan Energi Normal Normal Normal Normal 2 Asupan Protein Tidak Normal Normal Tidak Normal Tidak Normal 3 Asupan Lemak Normal Normal Normal Normal 4 Asupan KH Normal Normal Normal Normal 5 Asupan Serat Normal Normal Tidak Normal Normal 6 IMT Normal Normal Tidak Normal Normal 7 Aktivitas Fisik Normal Normal Normal Normal

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