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Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

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Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07
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Page 1: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Determining Factors of GPA

Natalie ArndtAllison Mucha

MA 33112/6/07

Page 2: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Objectives

• Determine important factors related to a Stevens student’s GPA

• Make use of methods and analytic techniques discussed in class

• Observe differences between (or lack thereof) engineering and science students

Page 3: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Initial Variable Ideas

• Years at school

• Hours work / week

• Hours sleep / night

• Cleanliness rating

• Which SAT score was higher

• Number of siblings

• Expected graduation year

Page 4: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Final Variable Ideas

• Gender• (Primary) major• # Semesters• # Credits / semester• GPA each semester• Cumulative # credits• Cumulative GPA

Gender: ____________ Major: ____________

Semester Credits GPA for Semester

1    

2    

3    

4    

5    

6    

7    

8    

9    

10    

Total credits earned: ______ Cumulative GPA: ____

Page 5: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Data Collection Method

• Voluntary Survey• Anonymous• Sent out to several subsets of general

student body• Only full-time (≥12 credits), undergraduate

Stevens students considered• Alumni who satisfied these conditions

during their time at Stevens also considered

Page 6: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Lurking Variables

• Influence of extracurricular activities

• Changes in curriculum from year to year certainly a factor

• Personal issues, medical problems, stressful situations unaccounted for

• Differences between same course as time passes (professor, size, textbook, etc.)

• Large variability to begin with

Page 7: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Data Collected

• 28 students participated in the survey• Combined 154 semesters worth of data• 18 males, 10 females• 19 engineering, 8 science, 1 art

• GPA ranged from 2.317 to 4.000• Credits ranged from 12.0 (imposed) to 25.5• Cumulative credits ranged from 33.0 to 177.0

Page 8: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

After Data Was Collected …

• All names removed, obs category created for relating information for one individual

• Semester 0 refers to cumulative data

• Primary major used to create categorical school column

• Number of credits per semester used to create load category

Page 9: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Data Compilationobs gender major school sem credits load GPA

2 Male Engineering Management E 1 17.0 b 3.938

2 Male Engineering Management E 4 17.5 b 4.000

2 Male Engineering Management E 2 18.0 c 4.000

2 Male Engineering Management E 3 18.5 c 3.829

2 Male Engineering Management E 5 20.0 c 4.000

2 Male Engineering Management E 0 101.0 N/A 3.947

…20 Male Computer Science S 3 13.0 a 3.769

20 Male Computer Science S 4 13.0 a 3.845

20 Male Computer Science S 1 15.0 b 3.866

20 Male Computer Science S 2 19.0 c 3.948

20 Male Computer Science S 0 69.0 N/A 3.884

…26 Female Electrical Engineering E 1 15.0 b 3.222

26 Female Electrical Engineering E 2 14.0 a 3.668

26 Female Electrical Engineering E 3 20.0 c 3.651

26 Female Electrical Engineering E 4 20.0 c 3.773

26 Female Electrical Engineering E 0 69.0 N/A 3.592

Page 10: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Preliminary Analysis

somewhat normal skewed, left-tailed

(by semester)

Page 11: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Initial Regressions

GPA = 0.01799*credits + 3.21493R2 = 0.01623

GPA = -0.0002035*credits + 3.5644477R2 = 0.0005585

semester data cumulative data

Page 12: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Residual Plotssemester data cumulative data

Page 13: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Comparisons by Gender

semester data cumulative data

Male Female Male Female

Page 14: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Comparisons by School

semester data cumulative data

EngineeringScience Science Engineering

Page 15: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Comparisons by Load

Load A Load B Load C Load D Load E

Page 16: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Stepwise Regression> stepwise = step(lm(gpa~credits+school+gender+sem),direction="both")Start: AIC=-217.77gpa ~ credits + school + gender + sem Df Sum of Sq RSS AIC- gender 1 0.017 20.359 -219.667- sem 1 0.198 20.541 -218.549<none> 20.342 -217.772- credits 1 0.524 20.866 -216.568- school 2 0.907 21.250 -216.273Step: AIC=-219.67gpa ~ credits + school + sem Df Sum of Sq RSS AIC- sem 1 0.194 20.553 -220.472<none> 20.359 -219.667- credits 1 0.530 20.889 -218.427- school 2 0.905 21.264 -218.189+ gender 1 0.017 20.342 -217.772Step: AIC=-220.47gpa ~ credits + school Df Sum of Sq RSS AIC<none> 20.553 -220.472+ sem 1 0.194 20.359 -219.667- school 2 0.872 21.425 -219.238- credits 1 0.556 21.109 -219.108+ gender 1 0.013 20.541 -218.549Call:lm(formula = gpa ~ credits + school)Coefficients:(Intercept) credits schoolE schoolS 2.95972 0.02407 0.09478 0.27379

> summary(stepwise)Call:lm(formula = gpa ~ credits + school)Residuals: Min 1Q Median 3Q Max -1.2119 -0.2735 0.0806 0.3038 0.6567 Coefficients: Estimate Std. Error t value Pr(>|t|) (Intercept) 2.95972 0.28566 10.361 <2e-16 ***credits 0.02407 0.01325 1.817 0.0717 . schoolE 0.09478 0.21630 0.438 0.6620 schoolS 0.27379 0.21774 1.257 0.2110 ---Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1 Residual standard error: 0.4104 on 122 degrees of freedomMultiple R-Squared: 0.05626, Adjusted R-squared: 0.03305 F-statistic: 2.424 on 3 and 122 DF, p-value: 0.06899

> anova(stepwise)Analysis of Variance TableResponse: gpa Df Sum Sq Mean Sq F value Pr(>F) credits 1 0.3536 0.3536 2.0987 0.14999 school 2 0.8717 0.4359 2.5872 0.07936 .Residuals 122 20.5532 0.1685 ---Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1

Page 17: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Important Variables

• Both forward and stepwise regression return credits and school as most important variables

• Gender and semester deemed insignificant using AIC

• Summary returns that credits is marginally significant (10%)

• Anova returns that school is marginally significant (10%)

Page 18: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Observations & Conclusions

• Intercept: 2.96• Engineering majors: add 0.09• Science majors: add 0.27• Add 0.02 to GPA per credit

Allows us to conclude that the science majors represented by our study average a GPA 0.18 points higher than engineering majors.

Page 19: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Recommendations

• Create a more refined study that allows us to focus on a specific area, rather than manipulating several variables at once

• Draw data from a significantly larger sample

• Find appropriate methodology to remove effect of lurking variables

Page 20: Determining Factors of GPA Natalie Arndt Allison Mucha MA 331 12/6/07.

Questions?


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