171x Filetype PPTX File size 0.05 MB Source: punjabiuniversity.ac.in
Dependent Variable Metric Non-Metric • Discriminant Independent Metric Regression Analysis Variable(s) •Binary/Logistic regression Non-Metric Hypothesis Chi-square Test testing • If the independent variable (which is non- metric) has two categories, we will use t-test • And if the independent variable has more than two categories we will use F-test (ANOVA) ANOVA • ANOVA uses F statistics which is the ratio of variances between groups and variances with-in groups (error variance) • If group means do not differ significantly, one can believe that all group means come from same population and do not differ • Larger the F statistics Larger is the difference between groups as compared to with-in group differences • F Statistics < 1 Indicates no significant difference in the group means and thus H is correct. o Assumptions Normality: • Ho Data are normally distributed • Steps to check overall normality –Analyze Non parametric tests Legacy dialogs One sample K S test – p-value of K S Test > 0.05 Data are normally distributed –p-value of K S Test < 0.05 Use Non-parametric test • Steps to check category-wise normality –Analyze Descriptive Explore Plots Tick Normality plots with stats • If your sample size for different categories is comparable, and any one or two categories are not normally distributed, even then, F & t are very robust tests - Andy Field Assumptions Homogeneity of Variance: • We assume that each sample comes from a population with same variance. And thus, variance across samples is homogeneous. • H Variances across groups is equal or Homogeneous o • Steps to check overall Variance –Analyze Descriptive statistics Descriptives Options Tick Variance • Steps to check category-wise Variance –Analyze Compare Means Means Options Tick Variance
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