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Crosta, Peter M.; Leinbach, Timothy; Jenkins, Davis – Community College Research Center, Columbia University, 2006
Colleges and state higher education agencies too often lack accurate information about the socioeconomic status (SES) of their students. This paper describes the methodology that Community College Research Center (CCRC) researchers used to estimate the SES of individual students in the Washington State community and technical college system using…
Descriptors: Socioeconomic Status, Community Characteristics, Census Figures, Two Year College Students

Boughan, Karl – 1990
In early 1990, Prince George's Community College (PGCC), in response to declining enrollments, developed an affordable and locally effective geo-demographic cluster system for meeting the college's research and marketing needs. The system, dubbed "PG-TRAK," is based on a model developed 15 years ago as a corporate marketing tool, and involves…
Descriptors: Census Figures, Cluster Analysis, Community Characteristics, Community Colleges
Boughan, Karl – 1990
In an effort to better market the college's credit programs and services, Prince George's Community College (PGCC), Mayland, has employed its own tracking system which utilizes a socioeconomic segmentation of their serviceable target population. This approach utilizes U.S. Census data grouping neighborhoods into 24 natural socioeconomic, cultural…
Descriptors: Cluster Analysis, Community Characteristics, Community Colleges, Credit Courses