Forecasting Methods in Higher Education: An Overview

Forecasting is the first, crucial stage of planning in any organization, and in higher education (HE) in particular. Student enrollment projections are particularly important, since they affect institutions’ income, the number of faculty needed, facility requirements, budgets, etc. There are overviews of forecasting and classifications in general and for particular methods and applications. However, to the best of our knowledge, the last overview of forecasting in HE was published in 1997. Since then, two major approaches sipped from business to HE and became dominant in HE forecasting: data mining and questionnaires for marketing. The purpose of this chapter is to provide an updated overview of forecasting methods used in HE and their main areas of application. We cover a large array of forecasting methods and areas of HE application, we classify them, and point at examples from the literature, rather than providing an exhaustive annotated review, since there are too many publications in the literature on forecasting in HE. Counting the number of articles published in the Web of Science during the last 20 years, we find that, out of six main forecasting methods identified and classified, four methods are used most often in HE: regression, simulation, data mining (including its sub-methods), and questionnaires. Furthermore, four areas of application for forecasting are used most often in HE: enrollment, marketing, teaching, and performance. The two relatively new forecasting methods used in HE, during the last 20 years, are data mining and questionnaires. These two, relatively new forecasting methods, educational data mining and questionnaires (for marketing), are classified in this chapter as active forecasting methods in HE, as they provide the administrator with control over the forecast by pointing (directly or indirectly) at actions which can achieve a better-targeted forecast. While the old methods, time series, and ratio methods, are classified as passive methods with no control. Though regression and simulation forecasting methods are often active, they can sometimes be passive.

[1]  M. Edwards College Enrollment during Times of Economic Depression , 1932 .

[2]  C. F. Schmid,et al.  Techniques of Forecasting University Enrollment , 1952 .

[3]  William A. Wallace,et al.  A computer simulation approach to enrollment projection in higher education , 1970 .

[4]  S. A. Hoenack,et al.  THE DEMAND FOR HIGHER EDUCATION AND INSTITUTIONAL ENROLLMENT FORECASTING , 1979 .

[5]  E. Wailand Bessent,et al.  Student Flow in a University Department: Results of a Markov Analysis , 1980 .

[6]  Zilla Sinuany-Stern A Financial Planning Model for a multi-campus college , 1984 .

[7]  N. K. Kwak,et al.  A Markov analysis of estimating student enrollment transition in a trimester institution , 1986 .

[8]  Zilla Sinuany-Stern,et al.  Forecasting hardware resource requirements , 1993, Comput. Oper. Res..

[9]  Magid Igbaria,et al.  An empirical study of computer capacity planning in U.S. universities , 1993, Inf. Manag..

[10]  Paul T. Brinkman,et al.  Methods and Techniques of Enrollment Forecasting , 1997 .

[11]  Steven C. Wheelwright,et al.  Forecasting: Methods and Applications, 3rd Ed , 1997 .

[12]  Shyi-Ming Chen,et al.  Handling forecasting problems using fuzzy time series , 1998, Fuzzy Sets Syst..

[13]  Gerald Burke,et al.  An undergraduate student flow model: Australian higher education , 1999 .

[14]  P. Murtaugh,et al.  PREDICTING THE RETENTION OF UNIVERSITY STUDENTS , 1999 .

[15]  J. Hemsley-Brown,et al.  Universities in a competitive global marketplace , 2006 .

[16]  Sebastián Ventura,et al.  Educational data mining: A survey from 1995 to 2005 , 2007, Expert Syst. Appl..

[17]  Ryan S. Baker,et al.  The State of Educational Data Mining in 2009: A Review and Future Visions. , 2009, EDM 2009.

[18]  MG Nicholls,et al.  The Use of Markov models as an aid to the evaluation, planning and benchmarking of Doctoral Programs , 2009, J. Oper. Res. Soc..

[19]  Çagdas Hakan Aladag,et al.  A high order fuzzy time series forecasting model based on adaptive expectation and artificial neural networks , 2010, Math. Comput. Simul..

[20]  Hamidah Razak Jantan,et al.  Human Talent Forecasting using Data Mining Classification Techniques , 2010, Int. J. Technol. Diffusion.

[21]  Matthew W. Ohland,et al.  Nonparametric Survival Analysis of the Loss Rate of Undergraduate Engineering Students , 2011 .

[22]  Dale Trusheim,et al.  Predictive Modeling: Linking Enrollment and Budgeting. , 2011 .

[23]  Hui-Wen Vivian Tang,et al.  Forecasting performance of grey prediction for education expenditure and school enrollment , 2012 .

[24]  Theresa M. Roeder,et al.  Simulating student flow through a college of business for policy and structural change analysis , 2012, J. Oper. Res. Soc..

[25]  Mary Jane B. Arcilla,et al.  Enrollment Forecasting for School Management System , 2012 .

[26]  Jun Wang,et al.  A new improved forecasting method integrated fuzzy time series with the exponential smoothing method , 2013 .

[27]  Hend Suliman Al-Khalifa,et al.  Educational Data Mining: A Systematic Review of the Published Literature 2006-2013 , 2013, DaEng.

[28]  George Athanasopoulos,et al.  Forecasting: principles and practice , 2013 .

[29]  D. M. Allen Multi-purpose enrollment projections: A comparative analysis of four approaches , 2013 .

[30]  George Siemens,et al.  Learning Analytics , 2013 .

[31]  J. Adeyemi,et al.  Projecting Enrollment for Effective Academic Staff Planning in Nigerian Universities. , 2013 .

[32]  Sari Widya Sihwi,et al.  Time series forecasting using exponential smoothing to predict the number of website visitor of Sebelas Maret University , 2015, 2015 2nd International Conference on Information Technology, Computer, and Electrical Engineering (ICITACEE).

[33]  Wahidah Husain,et al.  A Review on Predicting Student's Performance Using Data Mining Techniques , 2015 .

[34]  Chao Ge,et al.  Application of Grey Forecasting Model Based on Improved Residual Correction in the Cost Estimation of University Education , 2015, iJET.

[35]  Khuram Pervez Amber,et al.  Electricity consumption forecasting models for administration buildings of the UK higher education sector , 2015 .

[36]  Jubilant J. Kizhakkethottam,et al.  Student Academic Performance Prediction Model Using Decision Tree and Fuzzy Genetic Algorithm , 2016 .

[37]  Aditya Johri,et al.  Next-Term Student Performance Prediction: A Recommender Systems Approach , 2016, EDM.

[38]  Paul Attewell,et al.  The College Completion Puzzle: A Hidden Markov Model Approach , 2017 .

[39]  Vira Chankong,et al.  A System Dynamics Model for Predicting Supply and Demand of Medical Education Talents in China , 2017 .

[40]  Anat Cohen,et al.  Analysis of student activity in web-supported courses as a tool for predicting dropout , 2017, Educational Technology Research and Development.

[41]  Juho Leinonen,et al.  Predicting academic performance: a systematic literature review , 2018, ITiCSE.

[42]  J. Scott Armstrong,et al.  Forecasting methods and principles: Evidence-based checklists , 2018 .

[43]  A Structural Model for Predicting Student Retention , 2018 .

[44]  Survival strategies of international undergraduate students at a public research midwestern university in the United States: A case study , 2018 .

[45]  Eenjun Hwang,et al.  Hybrid Short-Term Load Forecasting Scheme Using Random Forest and Multilayer Perceptron , 2018, Energies.

[46]  Paulo J. V. Garcia,et al.  Early segmentation of students according to their academic performance: A predictive modelling approach , 2018, Decis. Support Syst..

[47]  Mu-Hsuan Chou Predicting self-efficacy in test preparation: Gender, value, anxiety, test performance, and strategies , 2019 .

[48]  L. Hagedorn,et al.  Undergraduate International Student Enrollment Forecasting Model: An Application of Time Series Analysis , 2019, Journal of International Students.

[49]  Nathaniel L. Wade Measuring, Manipulating, and Predicting Student Success: A 10-Year Assessment of Carnegie R1 Doctoral Universities Between 2004 and 2013 , 2019, Journal of College Student Retention: Research, Theory & Practice.

[50]  Cristóbal Romero,et al.  Educational data mining and learning analytics: An updated survey , 2020, WIREs Data Mining Knowl. Discov..

[51]  Mian Usman Sattar,et al.  Predicting Student Performance in Higher Educational Institutions Using Video Learning Analytics and Data Mining Techniques , 2020, Applied Sciences.

[52]  Emanuele Ogliari,et al.  Advanced Methods for Photovoltaic Output Power Forecasting: A Review , 2020, Applied Sciences.