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							| @ -1,61 +1,86 @@ | ||||
| 
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| 
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| 1. Describe the null hypotheses to which the p-values given in Table 3.4 | ||||
| correspond. Explain what conclusions you can draw based on these | ||||
| p-values. Your explanation should be phrased in terms of sales , TV , | ||||
| radio , and newspaper , rather than in terms of the coefficients of the | ||||
| linear model. | ||||
| 1. Describe the null hypotheses to which the p-values given in Table | ||||
|    3.4 correspond. Explain what conclusions you can draw based on | ||||
|    these p-values. Your explanation should be phrased in terms of | ||||
|    sales , TV , radio , and newspaper , rather than in terms of the | ||||
|    coefficients of the linear model. | ||||
| 
 | ||||
| 
 | ||||
| 	P-values that are very small indicate that the model for that | ||||
| 	predictor is likely to account for a significant amount of the | ||||
| 	association between the predictor and the response. If that is | ||||
| 	true, then, we reject the null hypothesis, and conclude that a | ||||
| 	relationship exists between the predictor and the response. The | ||||
| 	p-values computed from the response of sales to marketing budget | ||||
| 	for each marketing paradigm indicate will give us insight into | ||||
| 	which of these predictors have a strong relationship with sales | ||||
| 	of this product. | ||||
| 
 | ||||
| 	TV marketing and radio marketing both have a strong relationship | ||||
| 	to sales, according to their linear regression p-values, but | ||||
| 	newspaper advertising does not appear to be effective, given | ||||
| 	that the linear model does not account for much of the variation | ||||
| 	in sales across that domain. We can conclude that cutting back | ||||
| 	on newspaper advertising will likely have little effect on the | ||||
| 	sales of the product, and that increasing TV and radio | ||||
| 	advertising budgets likely will have an effect. Furthermore, we | ||||
| 	can see that radio advertising spending has a stronger | ||||
| 	relationship with sales, as the best-fit slope is significantly | ||||
| 	more positive than the best fit for TV advertising spending, so | ||||
| 	increasing the radio advertising budget will likely be more | ||||
| 	effective. | ||||
| 
 | ||||
| 
 | ||||
| 
 | ||||
| 
 | ||||
| 3. Suppose we have a data set with five predictors, X 1 = GPA, X 2 = IQ, | ||||
| X 3 = Gender (1 for Female and 0 for Male), X 4 = Interaction between | ||||
| GPA and IQ, and X 5 = Interaction between GPA and Gender. The | ||||
| response is starting salary after graduation (in thousands of dollars). | ||||
| Suppose we use least squares to fit the model, and get β₀ = 50, β₁ = | ||||
| 20, β₂ = 0.07, β₃ = 35, β₄ = 0.01, β₅ = −10. | ||||
| 3. Suppose we have a data set with five predictors, X₁ = GPA, X₂ = | ||||
|    IQ, X₃ = Gender (1 for Female and 0 for Male), X₄ = Interaction | ||||
|    between GPA and IQ, and X₅ = Interaction between GPA and Gender. | ||||
|    The response is starting salary after graduation (in thousands of | ||||
|    dollars). Suppose we use least squares to fit the model, and get | ||||
|    β₀ = 50, β₁ = 20, β₂ = 0.07, β₃ = 35, β₄ = 0.01, β₅ = −10. | ||||
| 
 | ||||
| 	(a) Which answer is correct, and why? | ||||
| 		i. For a fixed value of IQ and GPA, males earn more on average | ||||
| 		than females. | ||||
| 		i. For a fixed value of IQ and GPA, males earn more on | ||||
| 		   average than females. | ||||
| 
 | ||||
| 		ii. For a fixed value of IQ and GPA, females earn more on | ||||
| 		average than males. | ||||
| 
 | ||||
| 		iii. For a fixed value of IQ and GPA, males earn more on average | ||||
| 		than females provided that the GPA is high enough. | ||||
| 		iii. For a fixed value of IQ and GPA, males earn more on | ||||
| 		average than females provided that the GPA is high enough. | ||||
| 
 | ||||
| 		iv. For a fixed value of IQ and GPA, females earn more on | ||||
| 		average than males provided that the GPA is high enough. | ||||
| 
 | ||||
| 	(b) Predict the salary of a female with IQ of 110 and a GPA of 4.0. | ||||
| 	(b) Predict the salary of a female with IQ of 110 and a GPA of | ||||
| 	4.0. | ||||
| 
 | ||||
| 	(c) True or false: Since the coefficient for the GPA/IQ interaction | ||||
| 	term is very small, there is very little evidence of an interaction | ||||
| 	effect. Justify your answer. | ||||
| 	(c) True or false: Since the coefficient for the GPA/IQ | ||||
| 	interaction term is very small, there is very little evidence of | ||||
| 	an interaction effect. Justify your answer. | ||||
| 
 | ||||
| 
 | ||||
| 
 | ||||
| 
 | ||||
| 4. I collect a set of data (n = 100 observations) containing a single | ||||
| predictor and a quantitative response. I then fit a linear regression | ||||
| model to the data, as well as a separate cubic regression, i.e. Y = | ||||
| β₀ + β₁ X + β₂ X² + β₃ X³ + . | ||||
| 4. I collect a set of data (n = 100 observations) containing a | ||||
|    single predictor and a quantitative response. I then fit a linear | ||||
|    regression model to the data, as well as a separate cubic | ||||
|    regression, i.e. Y = β₀ + β₁ X + β₂ X² + β₃ X³ + . | ||||
| 
 | ||||
| 	(a) Suppose that the true relationship between X and Y is linear, | ||||
| 	i.e. Y = β₀ + β₁ X + . Consider the training residual sum of | ||||
| 	squares (RSS) for the linear regression, and also the training | ||||
| 	RSS for the cubic regression. Would we expect one to be lower | ||||
| 	than the other, would we expect them to be the same, or is there | ||||
| 	not enough information to tell? Justify your answer. | ||||
| 	(a) Suppose that the true relationship between X and Y is | ||||
| 	linear, i.e. Y = β₀ + β₁ X + . Consider the training residual | ||||
| 	sum of squares (RSS) for the linear regression, and also the | ||||
| 	training RSS for the cubic regression. Would we expect one to be | ||||
| 	lower than the other, would we expect them to be the same, or is | ||||
| 	there not enough information to tell? Justify your answer. | ||||
| 
 | ||||
| 	(b) Answer (a) using test rather than training RSS. | ||||
| 
 | ||||
| 	(c) Suppose that the true relationship between X and Y is not linear, | ||||
| 	but we don’t know how far it is from linear. Consider the training | ||||
| 	RSS for the linear regression, and also the training RSS for the | ||||
| 	cubic regression. Would we expect one to be lower than the | ||||
| 	other, would we expect them to be the same, or is there not | ||||
| 	enough information to tell? Justify your answer. | ||||
| 	(d) Answer (c) using test rather than training RSS. | ||||
| 	(c) Suppose that the true relationship between X and Y is not | ||||
| 	linear, but we don’t know how far it is from linear. Consider | ||||
| 	the training RSS for the linear regression, and also the | ||||
| 	training RSS for the cubic regression. Would we expect one to be | ||||
| 	lower than the other, would we expect them to be the same, or is | ||||
| 	there not enough information to tell? Justify your answer. (d) | ||||
| 	Answer (c) using test rather than training RSS. | ||||
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