Question

Question 1 How many explanatory (independent) variables are present in simple linear regression? A) More than...

Question 1

How many explanatory (independent) variables are present in simple linear regression?

A) More than 2

B) 1

C) 2


Question 2

How many response (dependent) variables are present in simple linear regression?

A) More than 2

B) 1

C) 2

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