TRUE or FALSE, if false explain why? 1. Simple linear regression is robust to situations where the variability in Y depends greatly on the value of X. 2. The Shapiro-Wilk test is the best way to identify non-normality of residuals that bad enough to invalidate a regression analysis. 3. The Working-Hoteling adjustment is made to ensure the false positive rates are not artificially increased when using prediciton bands.
TRUE or FALSE, if false explain why?
1. Simple linear regression is robust to situations where the variability in Y depends greatly on the value of X.
2. The Shapiro-Wilk test is the best way to identify non-normality of residuals that bad enough to invalidate a
3. The Working-Hoteling adjustment is made to ensure the false positive rates are not artificially increased when using prediciton bands.
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True or False and explain if false:
1. The slope estimate from a regression model is an example of
2. if a p-value is 0.9, then we may appropriately conclude that no relationship between X and Y exists
3. Assuming that X variable is controlled, one way to decrease standard errors in a sample linear