Student profile of the incoming First Year Class of the College of Engineering at UPRM and their academic performance after their first year Dr. David González Barreto Dr. Antonio A. González Quevedo Office of Institutional Research and Planning University of Puerto Rico at Mayagüez Presented at 2005 ASEE Annual Conference Portland, Oregon June 13, 2005
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Student profile of the incoming First Year Class of the College of Engineering at UPRM and their academic performance after their first year Dr. David.
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Student profile of the incoming First Year Class of the College of Engineering
at UPRM and their academic performance after their first year
Dr. David González BarretoDr. Antonio A. González Quevedo
Office of Institutional Research and PlanningUniversity of Puerto Rico at Mayagüez
Presented at 2005 ASEE Annual ConferencePortland, Oregon
June 13, 2005
Background Information for the College of Engineering
• In 2003, the College of Engineering of the University of Puerto Rico at Mayagüez had an undergraduate enrollment of 4,476. This enrollment places our college in the 13th position of United States of America Engineering Schools.
• Texas A&M ranked number 1 with 6,411 students (ASEE Prism, Summer 2004).
• Our college granted 680 bachelor’s degrees in 2001-2002, ranking number 1 in the degrees granted to Hispanics.
• The second spot belonged to Polytechnic University of Puerto Rico with 305 degrees, and the third to Florida International University with 154 bachelor’s degrees awarded (ASEE Prism, December 2003).
Objectives
• Show the profile of incoming engineering freshmen from 1990-2003 at the University of Puerto Rico at Mayagüez:
» Admission index (AI)» Type of high school» Gender» High school grade point average (GPA)» College Board Scores in Aptitude and
Achievement Tests • A comparison between actual admission criteria and
suggested alternative criteria is also presented. This longitudinal comparison is carried out to evaluate proposed changes in admission criteria in the future.
Outline of the Presentation
• Profile of the Incoming First Year Engineering Classes
• Description of Admission Criteria• Performance of the students after their First
Year in College• Suggested Admission Criteria• Findings and Conclusions• Bibliography• Acknowledgements
Profile: Mean HS GPA by School Type
Profile: Mean Verbal Aptitude by Type of School
Profile: Mean Math Aptitude by Type of School
Description of Admission Criteria
• The Admission Index (IGS) calculated for each prospective freshmen and used by the University of Puerto Rico system to decide who are admitted. The admission index formula was changed by the Board of Trustees for the incoming class of 1995
• The index includes three components: the high school grade point average, College Entrance Examination Board (CEEB) score for Verbal Aptitude (Spanish), CEEB score for Mathematical Aptitude
• The high school GPA has a weight of 50% of the value of the admission index, while the Mathematical and Verbal Aptitude each represent 25% of the AI.
Mean AI by Type of School
Average Admission Index per Year – Engineering
HS and 1st Year GPAs per Type of School
Summary of Incoming Students Profile
• The average entering class of engineering is 761 students, of which 62% are male and 38% is female
• Average high school grade point average is higher for public schools students, 3.84/4.0 when compared to private schools students who average 3.79/4.0. The average GPA has increased for the 14 years of study from 3.67 to 3.86.
• Average first year grade point average is higher for students coming from private schools.
• Average CEEB scores have decreased for the duration of this study with the exception of the English Achievement component.
• Average CEEB scores were higher for all six components for private school students.
Comparison with USA Trends1
– The percentage of institutions for which high school GPA or rank is “very important” has increased steadily since 1979
– The percentage of institutions for which high school GPA or rank is the single most important factor has decreased steadily
– Admission test scores show a steady increase as a “very important” factor has increased steadily
– California has recently proposed that aptitude test scores be replaced by achievement test scores
1 Taken from, Trends in College Admission 2000, by Hunter Breland, James Maxey, Renee Gernand, Tammie Cumming and Catherine Trapani. Can be downloaded from the AIR site.
Prediction Models
• Models were based on predicting the first year grade point average based on the high school great point average, and the five CEEB scores
• Model:• 1st Year GPA = f(GPA, Verbal Aptitude,
Mathematical Aptitude, English Achievement, Mathematical Achievement, Spanish Achievement) + ε
Prediction Models
GPA
1GPA
-GPA
4.03.53.02.5
1
0
-1
-2
-3
-4
Marginal Plot of 1GPA-GPA vs GPA
Prediction Models
Best Subsets Methods – College of Engineering
Vars
R-Sq(adj)
MallowsC-p
GPA
APT_VERB
APT_MATE
ACH_ING
ACH_MAT
ACH_ESP
1 11.5 1743.4 X
2 19.5 618.1 X X
3 21.6 324.2 X X X
4 22.8 165.9 X X X X
5 23.7 37.5 X X X X X
6 23.9 7 X X X X X X
Actual 20.8 438.0 X X X
Summary of comparison of models
• The model with three variables that best predicts 1st year GPA contains the following variables: High school GPA, Mathematical Achievement and English Achievement.
• In general, the analysis suggests that more than three variables should be used in order to improve the prediction ability (Cp).
• It is necessary to incorporate other additional variables in the model since the percentage of the variability explained by the models is low (but comparable to similar studies). For example, the number of credits in key courses (e.g science and math) taken in high school could be a variable to be considered.
December.• MINITAB® Release 14. (2004). Minitab Inc. State
College, PA.• Montgomery, Douglas C., Peck, Elizabeth A., and
Vining, Geoffrey G. (2003). Introduction to Linear Regression Analysis. Wiley and Sons, New York.
• Pike, Gary R. and Saupe, Joseph L. (2002). “Does High School Matter? An Analysis of Three Methods of Predicting First-Year Grades.” Research in Higher Education. 43(2), pp. 187-207.
• Wilson, Kenneth M. (1983). A Review of Research on the Prediction of Academic Performance after the Freshman Year. College Board Report No. 83-2.
Acknowledgements
The authors want to acknowledge the effort by Leo I. Vélez and Irmannette Torres from the Office of Institutional Research and Planning of the University of Puerto Rico at Mayagüez for providing and validating the data used in this study.