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UF STA 3024 - Multiple Regression Examples

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Example – What is the relationship between height and weight for UF students?Data on UF students’ heights and weights collected by STA3024 students. N=1309Questions about some data – are these heights correct?HT WTF 50.0 111F 51.0 115F 51.0 95F 52.0 113F 53.0 118F 53.0 120F 53.0 120F 53.0 130F 54.0 117F 54.0 130F 55.0 121F 55.0 128F 56.0 120F 56.0 122F 56.0 128F 57.0 103F 57.0 116F 57.0 140M 57.0 165F 58.0 104F 58.0 130F 58.0 90F 58.0 92F 58.0 95F 59.0 104F 59.0 110F 59.0 115F 59.0 125F 59.0 96F 59.0 97F 59.5 145M 80 160M 83 227M 83 227M 84 255M 89 296M 72 60M 73 105F 64 270908070605030025020015010050HTWTScatterplot of WT vs HTRegression Analysis: WT versus HT The regression equation isWT = - 279 + 6.41 HTPredictor Coef SE Coef T PConstant -279.01 11.19 -24.92 0.000HT 6.4088 0.1649 38.86 0.000S = 24.2205 R-Sq = 54.2% R-Sq(adj) = 54.2%Analysis of VarianceSource DF SS MS F PRegression 1 885986 885986 1510.29 0.000Residual Error 1276 748543 587Total 1277 1634529Predicted Values for New ObservationsNewObs HT Fit SE Fit 95% CI 95% PI 1 65 137.562 0.816 (135.961, 139.163) (90.019, 185.106) 2 60 105.518 1.448 (102.678, 108.359) (57.917, 153.120) 3 76 208.059 1.519 (205.080, 211.038) (160.449, 255.669) 8075706560300250200150100HTWTS 24.2205R-Sq 54.2%R-Sq(adj) 54.2%Fitted Line PlotWT = - 279.0 + 6.409 HT100500-50-10099.999990501010.01ResidualPercent24020016012080150100500-50Fitted ValueResidual1251007550250-25-501209060300ResidualFrequency1200110010009008007006005004003002001001150100500-50Observation OrderResidualNormal Probability Plot Versus FitsHistogram Versus OrderResidual Plots for WTRegression Analysis: WT_F versus HT_F The regression equation isWT_F = - 125 + 3.96 HT_FPredictor Coef SE Coef T PConstant -125.21 17.53 -7.14 0.000HT_F 3.9614 0.2700 14.67 0.000S = 19.1292 R-Sq = 24.9% R-Sq(adj) = 24.8%Analysis of VarianceSource DF SS MS F PRegression 1 78781 78781 215.29 0.000Residual Error 650 237852 366Total 651 316633 Regression Analysis: WT_M versus HT_M The regression equation isWT_M = - 184 + 5.14 HT_MPredictor Coef SE Coef T PConstant -184.21 25.73 -7.16 0.000HT_M 5.1421 0.3633 14.16 0.000S = 26.5446 R-Sq = 24.3% R-Sq(adj) = 24.2%Analysis of VarianceSource DF SS MS F PRegression 1 141187 141187 200.37 0.000Residual Error 624 439681 705Total 625 580868 Regression Analysis: WT versus HT, GENDER_M_1 The regression equation isWT = - 165 + 4.57 HT + 21.0 GENDER_M_1Predictor Coef SE Coef T PConstant -164.68 14.76 -11.16 0.000HT 4.5699 0.2271 20.12 0.000GENDER_M_1 20.963 1.866 11.23 0.000S = 23.1134 R-Sq = 58.3% R-Sq(adj) = 58.3%Analysis of VarianceSource DF SS MS F PRegression 2 953389 476695 892.31 0.000Residual Error 1275 681140 534Total 1277 1634529Example: Predicting College GPA – data from bookRegression Analysis: CGPA versus Height, Gender, etcThe regression equation isCGPA = 0.53 + 0.0194 Height + 0.047 Gender - 0.00163 Haircut - 0.042 Job + 0.0004 Studytime - 0.375 Smokecig + 0.0488 Dated + 0.546 HSGPA + 0.00315 HomeDist + 0.00069 BrowseInternet - 0.00128 WatchTV - 0.0117 Exercise + 0.0140 ReadNewsP + 0.039 Vegan - 0.0139 PoliticalDegree - 0.0801 PoliticalAffPredictor Coef SE Coef T PConstant 0.532 1.496 0.36 0.724Height 0.01942 0.01637 1.19 0.242Gender 0.0468 0.1429 0.33 0.745Haircut -0.001633 0.001697 -0.96 0.341Job -0.0418 0.1024 -0.41 0.685Studytime 0.00043 0.01921 0.02 0.982Smokecig -0.3746 0.2249 -1.67 0.103Dated 0.04881 0.07111 0.69 0.496HSGPA 0.5457 0.1776 3.07 0.004HomeDist 0.003147 0.003400 0.93 0.360BrowseInternet 0.000689 0.001163 0.59 0.557WatchTV -0.0012840 0.0009710 -1.32 0.193Exercise -0.011657 0.005934 -1.96 0.056ReadNewsP 0.01395 0.02272 0.61 0.543Vegan 0.0392 0.1578 0.25 0.805PoliticalDegree -0.01390 0.03185 -0.44 0.665PoliticalAff -0.08006 0.07741 -1.03 0.307S = 0.322198 R-Sq = 43.2% R-Sq(adj) = 21.5%Analysis of VarianceSource DF SS MS F PRegression 16 3.3135 0.2071 1.99 0.037Residual Error 42 4.3601 0.1038Total 58 7.6736Unusual ObservationsObs Height CGPA Fit SE Fit Residual St Resid 28 67.0 2.9800 3.5898 0.2442 -0.6098 -2.90R 40 65.0 3.9300 3.3458 0.2176 0.5842 2.46R 59 62.0 2.5000 3.4718 0.1352 -0.9718 -3.32RR denotes an observation with a large standardized residual.Best Subsets Regression: CGPA versus Height, Gender, ... Response is CGPA P B o r l o i P w t o s i l S e R c i t S H I E e a t H u m o n W x a l i H G a d o m t a e d D c e e i y k D H e e t r N V e a i n r t e a S D r c c e e g l g d c J i c t G i n h i w g r A Mallows h e u o m i e P s e T s s a e fVars R-Sq R-Sq(adj) C-p S t r t b e g d A t t V e P n e f 1 25.5 24.2 0.1 0.31667 X 1 13.0 11.5 9.3 0.34217 X 2 31.6 29.2 -2.4 0.30613 X X 2 29.4 26.9 -0.8 0.31109 X X 3 33.8 30.2


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UF STA 3024 - Multiple Regression Examples

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