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Original Articles

TURNOVER INTENT IN AN URBAN COMMUNITY COLLEGE: STRATEGIES FOR FACULTY RETENTION

Pages 593-607 | Published online: 17 Aug 2010
 

Abstract

High rates of faculty turnover can be costly to the reputation of an institution and to the quality of instruction. Community colleges may expect high rates of faculty turnover as an aging workforce retires. Other sources of attrition, however, can be attributed to organizational characteristics and the structural properties of faculty work. This study examined non-retirement turnover intent in an urban community college. Specifically, the study utilized an expectancy theory framework to explore the relationship between turnover intent and faculty perceptions of autonomy, organizational support for innovation, and collegial communication. The study population included all full-time faculty members employed by an urban community college in the southeastern U.S. Survey responses from 66% (N = 149) of the invited population revealed that organizational support for innovation had the strongest effect on turnover intent. Faculty who reported higher levels of support for innovation were less likely to indicate intentions to leave. Findings suggest that community colleges can target innovation and organizational change as vehicles for enhancing faculty retention rates. Change initiatives related to curriculum, governance, and faculty development can be designed in ways that facilitate faculty commitment to the institution.

Notes

*p < .05

**p < .01

a Reference group: Age 20–39

b Reference group: 7 years or fewer

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