Question

When is linear regression of no value? Question 32 options: 1) r > 0 2) r...

When is linear regression of no value?

Question 32 options:

1)

r > 0

2)

r = 1

3)

r =

4)

r = 0

5)

r < 0

Homework Answers

Answer #1

Option-4) r = 0

                                                                                                                                               

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