Question

If the R-square of the simple regression of Y on X is 0.5, and the sample...

If the R-square of the simple regression of Y on X is 0.5, and the sample size is 10, and you are testing the hypothesis that X does not have statistically significant effect on Y at the 5% level of significance, then the F table value you must be using for this test is …. .

5.32

4.97

161.5

1.96

5.12

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