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Journal of Population Economics

, Volume 20, Issue 2, pp 383–422 | Cite as

Changes in HIV/AIDS knowledge and testing behavior in Africa: how much and for whom?

  • Peter GlickEmail author
  • David E. Sahn
Original Paper

Abstract

Demographic and Health Survey data from nine African countries make it clear that HIV/AIDS prevention knowledge has been increasing. Still, in many cases, fewer than half of adult respondents can identify specific prevention behaviors. Knowledge is lowest in rural areas and among women. HIV testing generally remains rare but is highly variable across countries, likely reflecting differences in the supply of testing services. In most cases, schooling and wealth impacts on prevention knowledge have either been stable or have increased; hence, in the majority of contexts, initial disparities in knowledge by education and wealth levels have persisted or widened.

Keywords

Africa AIDS Demographic and health surveys 

JEL Classification

I12 J13 O55 

Notes

Acknowledgement

We would like to acknowledge the helpful comments of two anonymous referees.

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Copyright information

© Springer-Verlag 2006

Authors and Affiliations

  1. 1.Cornell UniversityIthacaUSA
  2. 2.Cornell UniversityIthacaUSA

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