14. What are the consequences of misspecifying the model we want to estimate? How can we...
Suppose that you estimate a regression model with a sample size of 92 observations and 10 explanatory variables, including the intercept, using ordinary least squares and the residual sum of squares from this estimated model is 22. You then conduct a Ramsey’s RESET on this model and the residual sum of squares from the Ramsey regression is 20. The test statistic associated with this Ramsey’s RESET is ______, and you can conclude at the 5-percent level of significance that _________________....
Question 3 3 pts Suppose that you estimate a regression model with a sample size of 112 observations and 10 explanatory variables, including the intercept, using ordinary least squares and the residual sum of squares from this estimated model is 22. You then conduct a Ramsey's RESET on this model and the residual sum of squares from the Ramsey regression is 20. The test statistic associated with this Ramsey's RESET is _, and you can conclude at the 5-percent level...
Question 3 3 pts Suppose that you estimate a regression model with a sample size of 112 observations and 10 explanatory variables, including the intercept, using ordinary least squares and the residual sum of squares from this estimated model is 22. You then conduct a Ramsey's RESET on this model and the residual sum of squares from the Ramsey regression is 20. The test statistic associated with this Ramsey's RESET is and you can conclude at the 5- percent level...
12. If autocorrelation is present what are the consequences? How can we resolve the problem of autocorrelation?
5. What do we mean by the term "heteroskedasticity"? Describe the consequences of heteroskedasticity for estimation and inference within the context of the classical linear regression model. How can we detect the presence of heteroskedasticity? Be specific. Should anything be done about heteroskedasticity if it is detected? If so, what should be done? Be specific. If not, why not?
5. What do we mean by the term "heteroskedasticity"? Describe the consequences of heteroskedasticity for estimation and inference within the context...
5. What do we mean by the term "heteroskedasticity"? Describe the consequences of heteroskedasticity for estimation and inference within the context of the classical linear regression model. How can we detect the presence of heteroskedasticity? Be specific. Should anything be done about heteroskedasticity if it is detected? If so, what should be done? Be specific. If not, why not?
5. What do we mean by the term "heteroskedasticity"? Describe the consequences of heteroskedasticity for estimation and inference within the context...
13. If we are estimating a simultaneous equation model, what are the consequences of ignoring simultaneity? In a simultaneous equation model, why is it important for the equations to be identified?
12. What is heteroskedasticity, and what are the consequences of it? How do we detect heteroskedasticity?
When we want confidence and use the conservative estimate of 95%, we can use the simple formula to roughly determine the sample size needed for a given margin of error p=.05. Use this formula to determine the sample size needed for a margin of error of 0.01 .