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1 Explore Case Processing Summary Cases Valid Missing N Percent N Percent N Percent kalcidiol 7 00,0% 0,0% 7 00,0% Descriptives kalcidiol Mean 5% Confidence Interval for Mean 5% Trimmed Mean Median Variance Std. Deviation Minimum Maximum Range Interquartile Range Skewness Kurtosis Lower Bound Upper Bound Statistic 7,5 57,7 00, 74,8 5,00 48,70 64, ,874,068 Std. Error 0,64,88,75 Percentiles Percentiles Weighted Average (Definition ) kalcidiol,80 6,60 5,00 5,00 7,00 Tukey's Hinges kalcidiol 7,00 5,00 4,00 Percentiles Weighted Average (Definition ) Tukey's Hinges kalcidiol kalcidiol kalcidiol Percentiles ,80 0,0 Page

2 Histogram 0 Mean =7,5 Std. Dev. =64,68 N =7 8 Frequency kalcidiol kalcidiol Stem-and-Leaf Plot Frequency Stem & Leaf 6, , , , Stem width: 00 Each leaf: case(s) Page

3 kalcidiol T-Test Group Statistics masa vrsta _tab A B N 0 0 Mean,50,640 Std. Deviation,0807,008 Std. Error Mean,00888,0080 Crosstabs stanje * zdravilo Crosstabulation zdravilo placebo kofein stanje budni Count Page

4 stanje * zdravilo Crosstabulation zdravilo stanje budni zaspali Expected Count Count Expected Count Count Expected Count placebo 8, , 7 7,0 kofein, 45 55, ,0 8,0 0 0, ,0 Pearson Chi-Square Continuity Correction b Likelihood Ratio Fisher's Exact Test Value 6,4 a 4,86 7,5 Linear-by-Linear Association 6, N of Valid Cases 48 Chi-Square Tests df Asymp. Sig. (-sided),000,000,000,000 Exact Sig. (- sided) a. 0 cells (,0%) have expected count less than 5. The minimum expected count is 8,74. b. Computed only for a x table Crosstabs,000 Exact Sig. (- sided),000 Case Processing Summary Cases Valid Missing N Percent N Percent N Percent stanje * zdravilo 0 00,0% 0,0% 0 00,0% stanje * zdravilo Crosstabulation zdravilo stanje budni zaspali Count Expected Count Count Expected Count Count Expected Count placebo 4,5 8 5,5 0 0,0 kofein 7 4,5 5,5 0 0,0,0,0 0 0,0 Page 4

5 Pearson Chi-Square Continuity Correction b Likelihood Ratio Fisher's Exact Test Value 5,05 a, 5,00 Linear-by-Linear Association 4,78 N of Valid Cases 0 Chi-Square Tests df Asymp. Sig. (-sided),05,07,0,08 Exact Sig. (- sided) a. cells (50,0%) have expected count less than 5. The minimum expected count is 4,50. b. Computed only for a x table Oneway,070 Exact Sig. (- sided),05 masa Descriptives 5% Confidence Interval for Mean N Mean Std. Deviation Std. Error Lower Bound Upper Bound A 0,50,70,040,448,45 B 8,4000,0580,0485,77,50 C,545,4,0456,4487,68 6,48,65,085,758,488 masa Descriptives A B C Minimum,0,0,0 Maximum,80,0,0,0,0 Test of Homogeneity of Variances masa Levene Statistic,000 df df 58 Sig.,74 Page 5

6 ANOVA masa Between Groups Within Groups Sum of Squares,4,48,74 60 df 58 Mean Square,46,04 F 5,75 Sig.,005 Robust Tests of Equality of Means masa Statistic a df df Sig. Welch 5,576 7,77,008 a. Asymptotically F distributed. Post Hoc Tests masa Scheffe (I) vrsta A B C (J) vrsta B C A C A B 5% Confidence Interval Mean Difference (I- J) Std. Error Sig. Lower Bound Upper Bound -,06500,067,6 -,,0 -,0848 *,065,007 -,674 -,046, ,448,0650,07 -,070,00,0848 *,065,007,046,674,448,067,0650 Multiple Comparisons *. The mean difference is significant at the 0.05 level. Homogeneous Subsets,6,07 -,0 -,00,,070 Scheffe Subset for alpha = 0.05 masa vrsta N A 0,50 B 8,4000,4000 C,545 Sig.,6,08 Means for groups in homogeneous subsets are displayed. Page 6

7 Means Plots,55,50 Mean of masa,45,40,5,0 A B vrsta C Univariate Analysis of Variance Between-Subjects Factors N emulgator podlaga 4,00 6,00,00 Page 7

8 Between-Subjects Factors podlaga,00 N Descriptive Statistics Dependent Variable:Stopnja penetracija e po,00,00 4,00,00,00 6,00,00,00,00,00 Mean Std. Deviation, 4,6 5,6667 8,008 8,6667 6, ,5556 4,44 8,0000, , 5,60 06,6667 4,6 65, 4,400 6,0000 5, , 6,658,0000,705 7,,77 8,4444 7, , 8,4 05,4444 6,707 64,6667,0058 N 7 Dependent Variable:Stopnja penetracija F,70 df 8 df Levene's Test of Equality of Error Variances a 8 Sig.,665 Tests the null hypothesis that the error variance of the dependent variable is equal across groups. a. Design: Intercept + emulg + podlaga + emulg * podlaga Dependent Variable:Stopnja penetracija Tests of Between-Subjects Effects Source Type III Sum of Squares df Mean Square F Sig. Corrected Model 7806,000 a 8 475,750 0,77,000 Intercept 808, , ,7,000 emulg 8,88 46,444 4,47,000 a. R Squared =,8 (Adjusted R Squared =,74) Page 8

9 Tests of Between-Subjects Effects Dependent Variable:Stopnja penetracija Source podlaga emulg * podlaga Error Type III Sum of Squares 660,667,444 58, Corrected 84,000 6 df a. R Squared =,8 (Adjusted R Squared =,74) Post Hoc Tests emulgator Mean Square 480,, 8,778 F 468,4,08 Sig.,000,78 Multiple Comparisons Stopnja penetracija Scheffe (I) emul gator 4,00 6,00 (J) emul gator 4,00 6,00 6,00 4,00 5% Confidence Interval Mean Difference (I- J) Std. Error Sig. Lower Bound Upper Bound -7,7778 *,5885,0-4,504 -,05 -,5556 *,5885,000-0,8-6,8 7,7778 *,5885,0,05 4,504-5,7778,5885,0 -,504,64,5556 *,5885,000 6,8 0,8 5,7778,5885 Based on observed means. The error term is Mean Square(Error) = 8,778. *. The mean difference is significant at the,05 level. Homogeneous Subsets,0 -,64,504 Page

10 Scheffe emul gator Subset N 57,5556 4,00 65, 6,00 7, Sig.,000,0 Stopnja penetracija Means for groups in homogeneous subsets are displayed. Based on observed means. The error term is Mean Square(Error) = 8,778. podlaga Stopnja penetracija Scheffe (I) podl aga,00,00 (J) podl aga,00,00,00,00 Multiple Comparisons 5% Confidence Interval Mean Difference (I- J) Std. Error Sig. Lower Bound Upper Bound -,6667 *,5885,000-8,40-4,40-77,0000 *,5885,000-8,746-70,574,6667 *,5885,000 4,40 8,40-45, *,5885,000-5,0760-8,507 77,0000 *,5885,000 70,574 8,746 45, *,5885,000 8,507 5,0760 Based on observed means. The error term is Mean Square(Error) = 8,778. *. The mean difference is significant at the,05 level. Homogeneous Subsets Page 0

11 Scheffe podl aga,00 Subset N 8,4444 Stopnja penetracija 60,,00 05,4444 Sig.,000,000,000 Means for groups in homogeneous subsets are displayed. Based on observed means. The error term is Mean Square(Error) = 8,778. Profile Plots Page

12 Estimated Marginal Means of Stopnja penetracija 0,00 podlaga,00,00 Estimated Marginal Means 00,00 80,00 60,00 40,00 0,00 4,00 emulgator 6,00 Regression Mode Variables Variables l Entered Removed Method konc. (mg/l) a. Enter a. All requested variables entered. b. Dependent Variable: odziv Variables Entered/Removed b ANOVA b Model Regression Residual Sum of Squares 5,00 68,65 545,66 a. Predictors: (Constant), konc. (mg/l) df 4 Mean Square 5,00,7 F 48,0 Sig.,000 a b. Dependent Variable: odziv Page

13 Model (Constant) konc. (mg/l) a. Dependent Variable: odziv Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig. -,4 5,55 Coefficients a,85,07,7 -,48 6,50 Minimum Maximum Mean Std. Deviation N Predicted Value -,4 0,0 4,4,844 5 Residual -7,67,5588,0000,8 5 Std. Predicted Value -,050,7,000,000 5 Std. Residual -,44,860,000,85 5 a. Dependent Variable: odziv Charts Residuals Statistics a,6,000 Page

14 Histogram Dependent Variable: odziv Mean =4,56E-5 Std. Dev. =0,85 N =5 0 Frequency Regression Standardized Residual Page 4

15 Normal P-P Plot of Regression Standardized Residual Dependent Variable: odziv,0 0,8 Expected Cum Prob 0,6 0,4 0, 0,0 0,0 0, 0,4 0,6 0,8,0 Observed Cum Prob GRAPH /SCATTERPLOT(BIVAR)=konc WITH odziv /MISSING=LISTWISE. Graph Page 5

16 0,0 0,0 odziv 60,0 0,0 0,0 R Sq Linear = 0, konc. (mg/l) Page 6

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