Question

In: Statistics and Probability

SELECT ALL THAT APPLY. Regression a. examines relationship between ordinal variables. b. is a linear prediction...

SELECT ALL THAT APPLY. Regression a. examines relationship between ordinal variables. b. is a linear prediction model. c. is bivariate if it involves one independent and one dependent variable. d. is multiple if it involves two or more independent and one dependent variable. 16. SELECT ALL THAT APPLY. In the linear regression equation Y = a + b (X) a. X = the score of the independent variable b. a = the Y-intercept c. b = the slope of the regression line d. Y = the observed score of the dependent variable

Solutions

Expert Solution

15.

Regression

a. examines the relationship between ordinal variables. : -False .it is for continuous.

b. is a linear prediction model. : TRUE

c. is bivariate if it involves one independent and one dependent variable. :- TRUE

d. is multiple if it involves two or more independent and one dependent variable. : TRUE

Answer:-

Regression:

b. is a linear prediction model.

c. is bivariate if it involves one independent and one dependent variable.

d. is multiple if it involves two or more independent and one dependent variable.

16.

In the linear regression equation Y = a + b (X)

a. X = the score of the independent variable: True X is the independent variable

b. a = the Y-intercept: True

c. b = the slope of the regression line: TRUE

d. Y = the observed score of the dependent variable:-False Y is predicted score in the regression equation

Answer:-

In the linear regression equation Y = a + b (X)

a. X = the score of the independent variable: True X is the independent variable

b. a = the Y-intercept: True

c. b = the slope of the regression line: TRUE


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