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Stricker, Lawrence J.; And Others – 1992
This study compared the effectiveness of several existing and proposed methods for statistically adjusting college grade point averages (GPAs) for course and departmental differences in grading standards, using first-semester grades from an entire entering class at a large state university (4,351 students), in 1988. Most of the adjusted GPAs…
Descriptors: Class Rank, College Freshmen, Comparative Analysis, Correlation
Jacobs, Lucy Cheser – 1985
Procedures for predicting academic achievement at Indiana University, Bloomington, are examined, based on data for the 4,145 freshmen who entered the university in fall 1983. Three sets of prediction equations and a graphic scheme for determining probable first semester grade point averages (GPAs) for males and females are provided. Entering…
Descriptors: Academic Achievement, Aptitude Tests, Class Rank, College Freshmen
Peer reviewed Peer reviewed
Schwartz, Audrey James – Journal of Legal Education, 1980
A portion of a larger survey study of the socialization of law students is reported. Focus is on student perceptions and idealized views of law, lawyers, and legal education in general and changes in these attitudes influenced by exposure to law school over a seven-month period during the first year. (JMD)
Descriptors: Attitude Change, Class Rank, Comparative Analysis, Higher Education
Chase, Clinton I. – 1981
As part of an update of studies for predicting fall semester grade point averages (GPA) of freshmen at Indiana University, 4,260 freshmen entering the Bloomington campus in the fall of 1980 were assessed. Scholastic Aptitude Test (SAT) scores and/or relative high school rank (RHSR) were used to predict first semester GPAs. Three sets of equations…
Descriptors: Academic Aptitude, Aptitude Tests, Class Rank, College Freshmen
Van Nelson, C.; Neff, Kathryn J. – 1990
Data from two studies in which subjects were classified as successful or unsuccessful were analyzed using neural net technology after being analyzed with a linear regression function. Data were obtained from admission records of 201 students admitted to undergraduate and 285 students admitted to graduate programs. Data included grade point…
Descriptors: Admission Criteria, Artificial Intelligence, Class Rank, College Entrance Examinations