Question: In Lab 7, we looked at the relationship between how long (in minutes) students spend per day on Facebook and their GPA. We also collected
In Lab 7, we looked at the relationship between how long (in minutes) students spend per day on Facebook and their GPA. We also collected information from the 19 students who took MATH2208 in our sample about how many hours of sleep they get each night and what time they get up in the morning (where 8 a.m. = 800)
Are the assumptions and conditions for a multiple regression model satisfied?For the independence assumption, explain in context. For the remaining assumptions, clearly refer to the appropriate graph(s)
1) Independence Assumption - Randomization condition:
2) Is the linearity assumption met? Check the straight enough condition.
This condition is a)met, since the a)scatterplot shows a general linear pattern and the
b)not met b)fitted line plot
c)normal probability plot
d)vs fit plot
e)histogram
a)scatterplot shows random scatter.
b)fitted line plot
c)normal probability plot
d)vs fit plot
e)histogram
3)Is the Equal Variance assumption: Does the plot thicken? Condition met?
4)Is the normal population assumption met?
Nearly normal condition: This condition is a)met since the histogram is a)approximately symmetric
b)not met b)skewed left
c)skewed right
d)unimodal
e)bimodal
and the normal probability plot is a)curved
b)straight
c)thickening
d)not thickening
e)randomly scattered
Outlier condition: This condition is a)met since although the histogram shows
b)not met
a)no outliers the normal probability plot shows a) a curve
b)a gap b)a general linear pattern
c)outliers c)points outside the bounds
d)no points outside the bounds

Regression Analysis: GPA versus Sleep, Time on FB, Time Up Regression Equation GPA = 3.924 - 0.0495 Sleep - 0.002439 Time on FB + 0.000329 Time Up Coefficients Term Coef SE Coef T-Value P.Value Constant 3.924 0.492 7.97 0.000 Sleep -0.0495 0.0418 -1.18 0.255 Time on FB -0.002439 0.000307 -7.95 0.000 Time Up 0,000329 0.000482 0.68 0,505 Model Summary 5 R-sq R-sq(adj) 0.253664 80.875 77.05% Analysis of Variance Source DF Adj 55 Adj MS F-Value P-Value Regression 3 4.0811 1.36038 21.14 0.000 Error 15 0.9652 0.06435 Total 18 5.0463 Fits and Diagnostics for All Observations Obs GPA Fit Resid Std Resid 1 2.100 2.250 -0.150 -0.80 2 2.600 2.670 -0.070 -0.30 3 2.900 2.533 0.367 1.68 4 3.100 3.603 -0.503 -2.32 R 5 3.100 3.225 -0.125 -0.52 6 3.200 2.987 0.213 0.88 7 3.000 2.891 0.109 0.46 8 3.300 3.510 -0.210 -0.94 9 3.500 3.764 -0.264 -1.12 10 3.500 3.569 -0.069 -0.29 11 3.400 3.431 -0.031 -0.19 12 3.400 3.544 -0.144 -0.67 13 3.800 3.733 0.067 0.28 14 3.900 3.784 0.116 0.52 15 3.900 3.711 0.189 0.80 16 3.900 3.703 0.197 0.83 17 4.000 3.658 0.342 1.41 18 4.100 3.866 0.234 1.02 19 2.800 3.069 -0.269 -1.33 R Large residual Prediction for GPA Regression Equation GPA = 3.924 - 0.0495 Sleep - 0.002439 Time on FB + 0.000329 Time Up Settings Variable Setting Sleep Time on FB 60 Time Up 800 Prediction Fit SE Fit 95% CI 95% PI 3.69476 0.0764520 (3.53180, 3.85771) (3.13006, 4.25945)
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