ISYE6414 REGRESSION SUMMER MIDTERM 1 AND 2 EXAM / ISYE6414 MIDTERM 1 AND 2 REAL EXAM QUESTIONS AND 100% CORRECT ANSWERS/ GRADED A
ISYE6414 REGRESSION SUMMER MIDTERM 1 AND 2 EXAM / ISYE6414 MIDTERM 1 AND 2 REAL EXAM QUESTIONS AND 100% CORRECT ANSWERS/ GRADED A If the confidence interval for a regression coefficient contains the value zero, we interpret that the regression coefficient is definitely equal to zero. ---ANSWER-- False The larger the coefficient of determination or R-squared, the higher the variability explained by the simple linear regression model. ---ANSWER-- True The estimators of the error term variance and of the regression coefficients are random variables. ---ANSWER-- True The one-way ANOVA is a linear regression model with one qualitative predicting variable. ---ANSWER-- True We can assess the assumption of constant-variance in multiple linear regression by plotting the standardized residuals against fitted values. ---ANSWER-- True If one confidence interval in the pairwise comparison includes zero under ANOVA, we conclude that the two corresponding means are plausibly equal. --- ANSWER-- True We do not need to assume normality of the response variable for making inference on the regression coefficients. ---ANSWER-- False Assuming the model is a good fit, the residuals in simple linear regression have constant variance. ---ANSWER-- True We cannot estimate a multiple linear regression model if the predicting variables are linearly independent. ---ANSWER-- False If a predicting variable is categorical with 5 categories in a linear regression model without intercept, we will include 5 dummy variables in the model. ---ANSWER-- True In the ANOVA, the number of degrees of freedom of the chi-squared distribution for the variance estimator is N-k-1 where k is the number of groups. ---ANSWER-- False The prediction of the response variable has higher uncertainty than the estimation of the mean response. ---ANSWER-- True In linear regression, outliers do not impact the estimation of the regression coefficients. ---ANSWER-- False Multicolinearity in multiple linear regression means that the columns in the design matrix are (nearly) linearly dependent. ---ANSWER-- True The statistical inference for linear regression under normality relies on large size of sample data. ---ANSWER-- False If the non-constant variance assumption does not hold in multiple linear regression, we apply a transformation to the predicting variables. ---ANSWER-- False The only assumptions for a linear regression model are linearity, constant variance, and normality. ---ANSWER-- False In the regression model, the variable of interest for study is the predicting variable. ---ANSWER-- False The constant variance is diagnosted using the quantile-quantile normal plot. --- ANSWER-- False β 1 is an unbiased estimator for β 0 . ---ANSWER-- False The estimator σ ^ 2 is a fixed variable. ---ANSWER-- False The linear regression model with a qualitative predicting variable with k levels/classes will have k + 1 parameters to estimate ---ANSWER-- True Under the normality assumption, the estimator for β 1 is a linear combination of normally distributed random variables. ---ANSWER-- True A negative value of β 1 is consistent with an inverse relationship between x and y . ---ANSWER-- True In the simple linear regression model, we lose three degrees of freedom because of the estimation of the three m
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isye6414 regression summer midter
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isye6414 regression summer midterm 1 and 2 exam 2
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