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Lee, Ming-Chi – Computers & Education, 2010
Although e-learning has been prompted to various education levels, the intention to continue using such systems is still very low, and the acceptance-discontinuance anomaly phenomenon (i.e., users discontinue using e-learning after initially accepting it) is a common occurrence. This paper synthesizes the expectation-confirmation model (ECM), the…
Descriptors: Electronic Learning, Expectation, Continuing Education, Intention
Castellano, Katherine E.; Ho, Andrew D. – Council of Chief State School Officers, 2013
This "Practitioner's Guide to Growth Models," commissioned by the Technical Issues in Large-Scale Assessment (TILSA) and Accountability Systems & Reporting (ASR), collaboratives of the "Council of Chief State School Officers," describes different ways to calculate student academic growth and to make judgments about the…
Descriptors: Guides, Models, Academic Achievement, Achievement Gains
Hein, Vanessa; Smerdon, Becky; Sambolt, Megan – College and Career Readiness and Success Center, 2013
The purpose of this brief is to provide information to state, district, and school personnel seeking support to determine whether their students are on a path to postsecondary success. The College and Career Readiness and Success Center (CCRS Center) has received technical assistance requests from a number of states regarding factors that predict…
Descriptors: Predictor Variables, Postsecondary Education, Success, College Readiness

Nicholson, Nigel – Administrative Science Quarterly, 1984
Presenting a new theory of work role transitions, a conceptual framework for analyzing and predicting modes of adjustment to transition is outlined. Includes a list of references. (MD)
Descriptors: Career Development, Employment, Individual Development, Motivation

Pope, James A.; Evans, John P. – College and University, 1985
A model using four categories of college applicants (enrollment deposit paid, deposit not yet paid, applicants not yet admitted, and those who have not yet applied) that allows forecasting of freshman enrollment from any point in the admission process and simulates the effects of trends and strategies on enrollment is outlined. (MSE)
Descriptors: College Admission, College Applicants, Enrollment Projections, Higher Education

Solomon, Eric S.; And Others – Journal of Dental Education, 1986
A mathematical model for predicting the size of the dental school applicant pool using the number of Dental Admission Test participants is presented. (MSE)
Descriptors: College Applicants, College Entrance Examinations, Dental Schools, Enrollment Projections

Imfeld, Thomas N.; And Others – Journal of Dental Education, 1995
A method for predicting high dental caries increments for children, based on previous research, is presented. Three clinical findings were identified as predictors: number of sound primary molars, number of discolored pits/fissures on first permanent molars, and number of buccal and lingual smooth surfaces of first permanent molars with white…
Descriptors: Allied Health Occupations Education, At Risk Persons, Children, Dentistry

Lam, Y. L. Jack – Journal of Educational Administration, 1984
Stepwise discriminant analysis coupled with logit regression analysis of freshmen data from Brandon University (Manitoba) indicated that six tested variables drawn from research on university dropouts were useful in predicting attrition: student status, residence, financial sources, distance from home town, goal fulfillment, and satisfaction with…
Descriptors: College Attendance, College Freshmen, Dropout Research, Higher Education

Merz, Thomas E. – Journal of Economic Education, 1996
Uses the various strategies involved in baseball to illustrate basic concepts in game theory. Specifically discusses Willie Mays' base-stealing strategy and how it relates to probability and risk. Reminds students that expected results depend on adopted assumptions. (MJP)
Descriptors: Baseball, Decision Making, Economics Education, Game Theory
Smull, Michael W.; Bunsen, Teresa D. – 1988
This paper presents a model for projecting the need for special education teachers which incorporates key elements of a market-based supply/demand model. The model provides equations to predict the supply of both certified and uncertified special education teachers. It involves the following supply factors: current certified employed teacher…
Descriptors: Disabilities, Educational Economics, Elementary Secondary Education, Incidence
Lieshoff, Sylvia – 1993
This paper examines the use of environmental scanning for institutions of higher education to achieve the following objectives: (1) provide early warning of changes that will have an impact on education; (2) define potential threats and opportunities to the institution or department; (3) promote a future orientation in faculty; and (4) alert…
Descriptors: College Planning, Data Analysis, Data Collection, Environmental Scanning