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Suppose the following statistics are generated by a simple linear regression model. Which of these indicates...

Suppose the following statistics are generated by a simple linear regression model. Which of these indicates that the regression model is statistically significant? If none of these then select “none”.

a) Adjusted R squared = 0.0014

b) p = 0.001

c)none of these

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Answer #1

The correct answer is " B : p = 0.001 "

● if p-value is less than significance level, there is strong evidence to reject the null hypothesis.

If p-value greater than significance level, there is insufficient evidence to reject the null hypothesis.

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