The State of Geography and Its Cognate Disciplines in the California State Universities California Geographical Society Yosemite, April 2005 Christine.

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GDEP is funded by NSF GEO Geography Diversity Initiatives at California State University, Long Beach: The Geoscience Diversity Enhancement Program.
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The State of Geography and Its Cognate Disciplines in the California State Universities California Geographical Society Yosemite, April 2005 Christine M. Rodrigue California State University, Long Beach

Ethnic diversity drives enrollment: To grow, our departments need to appeal to the growing demographics in California Regression Statistics –Multiple R0.50 –R Square0.25 –Standard Error12.94 –Observations26 ANOVA FSignif F –Regression MODEL Coeff SE t P –Y Intercept –Slope

The Beach: GDEP: C.M. Rodrigue (this paper at research link):