Which of these assumptions needs to be satisfied before statistical hypothesis can be done? Linear relationship between the dependent variable and the independent variable Normality of residuals Homoscedasticity All of these
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Which of these assumptions needs to be satisfied before statistical hypothesis can be done?
Linear relationship between the dependent variable and the independent variable
Normality of residuals
Homoscedasticity
All of these
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