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Using Demographic Data to Predict Students’ Achievement in DSPM Courses. Daryl Stephens, ETSU stephen@etsu.edu TNADE October 27, 2005. Students take developmental studies program (DSP) courses for many reasons: Forgot material learned in high school by the time they took entrance tests
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Using Demographic Data to Predict Students’ Achievement in DSPM Courses Daryl Stephens, ETSU stephen@etsu.edu TNADE October 27, 2005
Students take developmental studies program (DSP) courses for many reasons: • Forgot material learned in high school by the time they took entrance tests • Long gap between high school and matriculation • Didn’t take high school seriously • Didn’t consider going to college until later • First generation college student (Salter & Noblett, 1994)
Most students (~90%) at ETSU take MATH 1530, Probability and Statistics, as their mathematics course to satisfy core curriculum requirements. • In previous years, this course had a high failure rate.
The Problem • Placement procedures for TBR schools have changed. • Pre-2000: ACT < 19 or age > 22 → take AAPP • 2000-2002: COMPASS replaces AAPP • 2002: ACT score alone determines placement for students with score < 3 years old; COMPASS alone for others
The Problem • State funding is static. • Placement decisions based on one test. • Enrollment caps may happen in the future. • Is there a way to augment the placement process by predicting a student’s chance of success or failure in developmental or core math classes?
Purpose • Develop models to predict success of students in • DSPM 0800 (Elementary Algebra) • DSPM 0850 (Intermediate Algebra) • MATH 1530 (Probability and Statistics) • Use multiple regression to develop the models using readily obtainable information
Importance • MATH 1530 traditionally had high failure rate • Developmental math students are at a greater risk of failure and dropping out • Specific developmental studies program advisors done away with in budget crunch of 2003
Importance • Previous similar studies on developmental students used additional instruments which cost money. • Very few universities require probability and statistics for math credit for graduation. Most similar studies on core math deal with college algebra, precalculus, or math survey courses.
Assumptions • Prediction is possible • Self-reported data are correct • Information in SIS is correct
Limitations • Different demographics and course requirements from other institutions, so work only applies to ETSU • Data only collected for fall; spring and summer grades are probably different
Definitions • DSPM 0800: Elementary algebra • Arithmetic review, algebraic representations, linear equations in one and two variables • DSPM 0850: Intermediate algebra • Exponents, polynomials, factoring, • MATH 1530: Probability and statistics • “Stat mansion” and “stat cave”
Definitions • COMPASS (Computerized Adaptive Placement Assessment and Support System • Prealgebra and algebra sections • Reading and writing sections • Replaced AAPP
Developmental Studies History • Special programs at Harvard in 17th century • Preparatory department at University of Wisconsin, 1849 • Morrill Acts, late 19th century, establish land grant colleges and extend access to higher education to more people
Developmental Studies History • Preparatory departments widespread in early 20th century (350 in 1915) • GI Bill of Rights brings in veterans with needs for auxiliary services • 1960s-70s: Increase of women, students of color, first-generation students, students with learning disabilities; open-access community colleges established
Tennessee DSP History • TBR establishes formal developmental studies program in 1984. • Defining Our Future (2001): “operate more efficiently and with more limited resources” • Move 0700-level courses to community colleges
Related Research • Developmental Math • Core Math (almost nothing on P&S) • What factors are related to success in the courses? Three broad categories: • Academic • Demographic • Affective
What variables predict course success in dev. math? • High school GPA, at least for traditional students • Scores on the ACT or SAT — sometimes • Placement tests (e.g. COMPASS, ASSET, Accuplacer, CPT, PTT, CLAST) — sometimes • GED math scores — as adjunct to other placement scores
Course success in dev. math • Number of high school mathematics courses taken — sometimes • High school math GPA – some courses • College GPA • Attendance • Study habits • Age or length of time since last math class
Course success in dev. math (cont’d) • Gender (some studies) • Race • Math anxiety level not related to grade! • Attitude • Perception of success, engagement in class • Paying attention and interacting with instructor
Success in core classes • Very little research on success in classes like MATH 1530, so other courses examined • ACT/SAT math scores (usually) • COMPASS, TASP, local placement tests • High school GPA for college algebra (multiple studies) and calculus (but not precalculus)
Success in core classes (contd.) • HS math GPA – mixed results • HS percentile rank • Number and difficulty of HS math classes taken • Whether a math class taken senior year • Students who didn’t take intermediate algebra scored sig. higher in college alg.
Success in core classes (contd.) • Age in some cases • Time since last math course • Gender? Yes in 3, no in 5 studies • Full-time vs. part-time (1 study) • Class meeting time (1 study) • No difference in resident vs. commuter, campus activity
Success in core classes (contd.) • Attitude • Learning styles • Self-concept
Relationship Questions Is there a relation between course grade and … • ACT (DSPP) math scores? • ACT (DSPP) reading scores? • COMPASS intermediate algebra scores? • COMPASS reading scores? • Number of college preparatory math classes taken in high school? • High school GPA?
From SIS: ACT composite ACT math ACT reading ACT English High school GPA Age on first day of class From Survey: Number of high school math classes taken Number of years since last HS math class Regression QuestionsCan a regression equation be found to predict final course grade based on these items?
From SIS: COMPASS writing COMPASS reading COMPASS prealgebra COMPASS intermediate algebra Age on first day of class From Survey: Number of high school math classes taken Number of years since last HS math class Regression QuestionsCan a regression equation be found to predict final course grade based on these items?
Method • Collect information about courses taken in high school and year of last high school math class from students via survey • Obtain other information from SIS • Use Pearson correlation for relationship questions • Use stepwise multiple regression for grade prediction questions
Initial Placement • ACT (DSPP) Math section • < 17 (SAT < 440): DSPM 0800 • 18 (SAT 450): DSPM 0850 • >19 (SAT > 450): college level math • COMPASS • Prealgebra score < 29: DSPM 0700 • Prealgebra 30-99 and algebra 20-27: DSPM 0800 • Algebra 28-49: DSPM 0850 • Algebra 50-99: college level math
Data considerations • Not counted: grades of W, WF, I • FN grade not counted to be consistent with some other ETSU studies • Online sections, RODP sections not included
Surveys returned • DSPM 0800: 149 / 304 (49%) • No night, off-campus, or ITV sections • DSPM 0850: 214 / 455 (47%) • Included Kingsport, night, ITV • MATH 1530: 631 / 1074 (59%)
Grade Distribution Table 3 * Grades of C-, D+, and D are not allowed in developmental studies courses. **Not used in answering the research questions.
Regression Using ACT DSPM 0800 (95 students) • Model 1: ŷ = –.589(HSMATH) + 4.599 (p = .001) • Model 2: ŷ = –.765(HSMATH) + 1.009(HSOGPA) + 2.298 (p < .001)
Regression Using ACT DSPM 0850 (160 students) • Model 1: ŷ = .364(ACTM) – 3.238 (p < .001) • Model 2: ŷ = .301(ACTM) + .662(HSOGPA) – 4.111 (p < .001)
Regression Using ACT MATH 1530 (475 students) Four models (p < .001 in each case; r2 ranging from .233 to .353): • ŷ = .134(ACTM) – .521 • ŷ = .092(ACTM) + .771(HSOGPA) – 2.181 • ŷ = .103(ACTM) + .910(HSOGPA) + .108(AGE) – 4.953 • ŷ = .089(ACTM) + .855(HSOGPA) + .105(AGE) + .025(ACTE) – 4.9
Regression Using COMPASS • DSPM 0800 (33 students) – no equation possible • DSPM 0850 (23 students with all sections) ŷ = .020 (COMPASS writing) + 1.374 (r2 = .221, p = .024) • DSPM 0850 (44 students with math scores) ŷ = .023 (COMPASS arithmetic) + 1.730 (r2 = .190, p = .033)
Regression Using COMPASS MATH 1530 • 22 students with all COMPASS sections: no equation possible • 51 students with just math sections: ŷ = .027(COMPASS arithmetic) + .671 (r2 = .276, p < .001)
Observations: 0800 • Elementary algebra: only high school GPA showed a significant correlation with course grade; math preparation in high school showed a little bit of predictive value. • Finding agrees with Long (2003) – ACT math score not significantly correlated with E.A. course grade