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Spreadsheet Models for Enrollment Projections

UCF's Enrollment Projection Modeling Methods. 2. July 25, 2006. Goals for the Presentation. Share ideas for methods of developing enrollment projectionsUnderstand challenge of enrollment projections in a growth environmentDiscuss alternative modeling approachesNew insight into the use of SAS and Excel features to manage data and create reportsTake away: Sample Excel sheet models for your use.

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Spreadsheet Models for Enrollment Projections

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    1. Spreadsheet Models for Enrollment Projections Sandra Archer Interim Director, University Analysis and Planning Support University of Central Florida 23rd SUS Data Workshop IR Meeting July 25, 2006 Tallahassee, Florida

    2. UCF's Enrollment Projection Modeling Methods 2 July 25, 2006 Goals for the Presentation Share ideas for methods of developing enrollment projections Understand challenge of enrollment projections in a growth environment Discuss alternative modeling approaches New insight into the use of SAS and Excel features to manage data and create reports Take away: Sample Excel sheet models for your use

    3. UCF's Enrollment Projection Modeling Methods 3 July 25, 2006 The University of Central Florida Established in 1963 (first classes in 1968), Metropolitan Research University Grown from 1,948 to 45,000 students in 37 years 38,000 undergrads and 7,000+ grads Ten colleges 12 regional campus sites 7th largest public university in U.S. 89% of lower division and 67% of upper division students are full-time

    4. UCF's Enrollment Projection Modeling Methods 4 July 25, 2006 Why Do Enrollment Modeling? Projecting income from tuition Planning courses and curriculum Allocating resources to academic departments Long-term master planning Strategic planning Admissions policies How accurate do these projections have to be? See Hopkins, David S. P. and Massy, William F., Planning Models for Colleges and Universities, Stanford University Press, Stanford, CA, 1981 for additional information on enrollment planning

    5. UCF's Enrollment Projection Modeling Methods 5 July 25, 2006 Enrollment Models Objective: find simplest model that predicts future enrollment based on past enrollment levels and new students enrolling Methods Regression (REG) Grade progression ratio method (GPR) Markov chain models (MC) Cohort flow models (CF) Notation Nj(t) = number of students in state j at time t fj(t) = number of students enrolling in state j at time t j = state index—stands for class level

    6. UCF's Enrollment Projection Modeling Methods 6 July 25, 2006 Regression Models Student inventory = predicted returning students plus expected new students Prediction of returning students estimated by multivariate regression N(t) = F[ Nj(t-1), fj(t-1), Nj(t-2), fj(t-2), … ] + f(t)

    7. UCF's Enrollment Projection Modeling Methods 7 July 25, 2006 Grade Progression Ratio Ratio of students in one class level at time t to students in next-lower class level at time t-1 Assumes Students follow an orderly progression form one state to another All students in each state move on to next state in one time period or drop out of the system for good Very simple model good for year-to-year projections Data readily available Not usable in higher education Estimate the GPR from historical data aj-1,j(t) = Nj(t)/ Nj-1(t-1) Apply GPR to current enrollment level to predict next time period enrollment

    8. UCF's Enrollment Projection Modeling Methods 8 July 25, 2006 Markov Chain Stochastic process Fluctuate in time because of random events System can be in various states Markov property—each outcome depends only on the one immediately preceding it Cross-sectional outlook Transition fraction pij = fraction of students in class i in one period that can be found in class j in the subsequent time period

    9. UCF's Enrollment Projection Modeling Methods 9 July 25, 2006 Cohort Flow Models Adopt a longitudinal outlook Take account of students’ origins Consider students’ accumulated duration of stay Students are grouped into cohorts at the time they enter the university (cohort survivor fractions) Could be viewed as a special case of Markov chain model where states are expanded to include origin and length of stay Cohorts typically defined for fall semester Combine with semester transition fractions to generate annual estimate

    10. UCF's Enrollment Projection Modeling Methods 10 July 25, 2006 Combined Cohort-Markov Model

    11. UCF's Enrollment Projection Modeling Methods 11 July 25, 2006 Overall Enrollment Projection

    12. UCF's Enrollment Projection Modeling Methods 12 July 25, 2006 UCF Approach Overall enrollment by level Use combined cohort-Markov model for next five years Use combined population and high school graduate growth rate projections for years 6 - 10 years Enrollment and degrees by program Conduct at major code level (degree & track) Develop initial enrollment projections and degree projections Programs conduct review of estimates and modify projections Not conducted this year

    13. UCF's Enrollment Projection Modeling Methods 13 July 25, 2006 UCF Approach

    14. UCF's Enrollment Projection Modeling Methods 14 July 25, 2006 5-Year Model History Initial development Excel spreadsheet Manual adjustments/overwrites to improve prediction Historical data not updated Needed an approach that would generate appropriate adjustment factors that would be useful for prediction, independent of manual fine tuning adjustments Re-engineered in 2000

    15. UCF's Enrollment Projection Modeling Methods 15 July 25, 2006 5-Year Model Retained basic conceptual structure Developed new spreadsheet structure Updated data and formulas Revised “unclass” HC to a weighted formula Selection of “optimum” adjustment parameters for prediction of next year HC Utilized multiplicative correction parameters Annual update of historical input data

    16. UCF's Enrollment Projection Modeling Methods 16 July 25, 2006 5-Year Model Predicts headcount (HC) Estimates student credit hours (SCH) from HC based on previous behavior Estimates FTE from SCH (40 hrs UG, 32 hrs Grad)

    17. UCF's Enrollment Projection Modeling Methods 17 July 25, 2006 Data Inputs to Determine HC New Student Input Estimated HC of new students by type: (FTICs, CC Trans, Other Trans & Graduate) By semester for five future years Provided by administrators New Undergraduate Student Allocation Fractions Historical allocation of each entrant type of undergraduate students (FTIC, CCT, OT) to a student classification (Fresh, Soph, Jr, Sr) Undergraduate Fall Retention Fractions Historical surviving (fall to fall) undergraduate students from annual entering cohort Ten years of entering cohorts Average of the two most recent cohorts Graduate Fall Continuation Fractions Historical rate of graduate students continuing fall to fall (two-year average) Computed only using the total number of graduate students; not cohort based Semester Transition Fractions Students by level allocated to student classifications in the subsequent semester Spring to summer; Fall to spring Summer to fall (new summer entrants)

    18. UCF's Enrollment Projection Modeling Methods 18 July 25, 2006 5-Year Model Details Summer semester Use Spring to Summer transition rate (from previous year) multiplied by previous Spring enrollments (data) by class plus new Summer students Fall semester Use Fall cohorts with “cohort retention in class” factors (based on student file) plus new Fall students plus continuing Summer students Spring semester Use Fall to Spring transition rate (from previous year) multiplied by Fall enrollments (modeled) by class plus new Spring students

    19. UCF's Enrollment Projection Modeling Methods 19 July 25, 2006 5 Year Model

    20. UCF's Enrollment Projection Modeling Methods 20 July 25, 2006 5-Year Model – Adjustment Parameter Determination Adjustment parameters Existing approach [transition rate ci, group size Xi, and adjustment parameter ai ] ciXi + ai New approach aiciXi Select ai so that the predicted values for the previous year match the actual values Minimize the squared deviations of the difference (predicted minus actual) Implemented in Excel using Solver

    21. UCF's Enrollment Projection Modeling Methods 21 July 25, 2006 Adjustment Parameter Optimization Setup

    22. UCF's Enrollment Projection Modeling Methods 22 July 25, 2006 User Inputs: Allow for Adjustments

    23. UCF's Enrollment Projection Modeling Methods 23 July 25, 2006 5-Year Model Output

    24. UCF's Enrollment Projection Modeling Methods 24 July 25, 2006 5-Year Model Results – Predicted HC

    25. UCF's Enrollment Projection Modeling Methods 25 July 25, 2006 5-Year Model Conclusions Excel allows for “what if” analysis and adjustments Model is fairly accurate in the short term; increasing error in future years Based on historical student behavior Data-driven process Detail at student level and term

    26. UCF's Enrollment Projection Modeling Methods 26 July 25, 2006 10-Year Projection Extension Model Short-term detailed model projects t1 – t5 Extension model projects t6 – t10 Applies growth factor to t5 estimates to obtain t6 and repeats the process on an annual basis until t10 estimates are obtained Lower, Upper, or Graduate growth factor Average population growth and high school graduation growth

    27. UCF's Enrollment Projection Modeling Methods 27 July 25, 2006 10-Year Projection Extension Model Using the population and the high school graduate growth data, a composite annual growth rate was computed for each of the regions: 11-County Service Region + 4 counties Other Florida Method applied to FTIC, CC Trans, Other Trans, Graduate

    28. UCF's Enrollment Projection Modeling Methods 28 July 25, 2006 10-Year Model: Population Growth Population growth for Florida from Office of Economic and Demographic Research (http://edr.state.fl.us/) Projections by county for persons in the 18-24 and 25-44 age groups Growth rates vary by county, the relevant UCF growth rates were developed by focusing on the counties that are currently the primary source of the university’s students Lower Level mostly First Time In College (FTIC) students Upper Level mostly Community College Transfers (CCT) Other transfers split between upper and lower

    29. UCF's Enrollment Projection Modeling Methods 29 July 25, 2006 10-Year Model: High School Graduation Graduation projections from Florida Department of Education (http://www.firn.edu/doe/evaluation/pdf/projhsgrad.pdf) Overall growth rate accounts for the time since high school graduation until college entry 0 years for FTIC 2 years for CCT 4 years for Graduate Combined to estimate the growth for Lower Level, Upper Level, and Graduate students

    30. UCF's Enrollment Projection Modeling Methods 30 July 25, 2006 10-Year Model: Combined Growth Time-adjusted growth factors using the average of the population-based and the high school-based growth rates

    31. UCF's Enrollment Projection Modeling Methods 31 July 25, 2006 10-Year Model: Results Growth factors applied to 5-year model output FTE and HC

    32. UCF's Enrollment Projection Modeling Methods 32 July 25, 2006 10-Year Model Output Regional campus growth rates provided by administration Overall growth allocated to the campuses

    33. UCF's Enrollment Projection Modeling Methods 33 July 25, 2006 10-Year Projection Extension Model

    34. UCF's Enrollment Projection Modeling Methods 34 July 25, 2006 10-Year Model Conclusions Starts with detailed 5-year model output as a base Applies high school graduation and population projections; weighted by the areas that supply our students Regional growth allocation based on administrative input Future developments Workforce demand Regional, web, and other trends

    35. UCF's Enrollment Projection Modeling Methods 35 July 25, 2006 Program Enrollment Projection Model

    36. UCF's Enrollment Projection Modeling Methods 36 July 25, 2006 Questions

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