Demographic and socio-economic determinants of female migration in rural KwaZulu-Natal.

Female migration in South Africa has been on the increase over the years. This thesis attempts to look at the demographic and socio-economic factors that drive this increase using data from the Africa Centre Demographic Information System (ACDIS) during the period 2001 and 2008. Using data that prov...

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Main Author: Okumu, Catherine Andayi.
Other Authors: Nzimande, Nompumelelo.
Language:en_ZA
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/10413/6379
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spelling ndltd-netd.ac.za-oai-union.ndltd.org-ukzn-oai-http---researchspace.ukzn.ac.za-10413-63792014-02-08T03:49:21ZDemographic and socio-economic determinants of female migration in rural KwaZulu-Natal.Okumu, Catherine Andayi.Emigration and immigration--KwaZulu-Natal.Human beings--Migrations.Theses--Population studies.Female migration in South Africa has been on the increase over the years. This thesis attempts to look at the demographic and socio-economic factors that drive this increase using data from the Africa Centre Demographic Information System (ACDIS) during the period 2001 and 2008. Using data that provides for timing of events such as migration and births, the study analyses the time it took females to migrate. Migration was defined as having out-migrated the Demographic Surveillance Area (DSA) and never coming back. Migration levels were found to be high with 28 per cent of the females between 15-49 years of age out-migrating from the DSA. Models were created to explore the demographic and socio-economic factors controlling for other known determinant of migration. In the logistic regression, odds ratios showed that parity and childbearing status were important predicators of female migration. Females with four children were less likely to out-migrate the DSA (a 61 per cent less chance of migrating compared to females without children). Furthermore, pregnant females were not likely to migrate (a 45 per cent less chance of migrating compared to females who are not pregnant or breastfeeding). In a survival analysis, determinants of timing of migration showed that females with high parities had a higher survivorships to out-migration, compared to females who were pregnant. Hazard ratios also showed that females with four children are not likely to migrate compared to females with four children (a 7 per cent less hazard of migrating compared to females with no children). Age, marital status and educational attainment were also found to be predictors of female migration. Older females were less likely to migrate compared to younger females (females in the 44-49 age group had a 70 per cent less hazard of migrating compared to females in the 15-19 age group). Currently married and cohabiting females had a 29 per cent less hazard of migrating compared to never married females. Females with high educational attainment were more likely to migrate compared to females without education (an 18 per cent higher hazard of migrating compared to females without education). The timing of migration showed that pregnant females migrate after five years into the start of their pregnancy (date of conception). In conclusion, females with many children and females who are pregnant or breastfeeding are not likely to migrate.Thesis (M.A.)-University of KwaZulu-Natal, Durban, 2011.Nzimande, Nompumelelo.Herbst, Kobus.Moreno, Eduardo.2012-09-11T07:11:34Z2012-09-11T07:11:34Z20112011Thesishttp://hdl.handle.net/10413/6379en_ZA
collection NDLTD
language en_ZA
sources NDLTD
topic Emigration and immigration--KwaZulu-Natal.
Human beings--Migrations.
Theses--Population studies.
spellingShingle Emigration and immigration--KwaZulu-Natal.
Human beings--Migrations.
Theses--Population studies.
Okumu, Catherine Andayi.
Demographic and socio-economic determinants of female migration in rural KwaZulu-Natal.
description Female migration in South Africa has been on the increase over the years. This thesis attempts to look at the demographic and socio-economic factors that drive this increase using data from the Africa Centre Demographic Information System (ACDIS) during the period 2001 and 2008. Using data that provides for timing of events such as migration and births, the study analyses the time it took females to migrate. Migration was defined as having out-migrated the Demographic Surveillance Area (DSA) and never coming back. Migration levels were found to be high with 28 per cent of the females between 15-49 years of age out-migrating from the DSA. Models were created to explore the demographic and socio-economic factors controlling for other known determinant of migration. In the logistic regression, odds ratios showed that parity and childbearing status were important predicators of female migration. Females with four children were less likely to out-migrate the DSA (a 61 per cent less chance of migrating compared to females without children). Furthermore, pregnant females were not likely to migrate (a 45 per cent less chance of migrating compared to females who are not pregnant or breastfeeding). In a survival analysis, determinants of timing of migration showed that females with high parities had a higher survivorships to out-migration, compared to females who were pregnant. Hazard ratios also showed that females with four children are not likely to migrate compared to females with four children (a 7 per cent less hazard of migrating compared to females with no children). Age, marital status and educational attainment were also found to be predictors of female migration. Older females were less likely to migrate compared to younger females (females in the 44-49 age group had a 70 per cent less hazard of migrating compared to females in the 15-19 age group). Currently married and cohabiting females had a 29 per cent less hazard of migrating compared to never married females. Females with high educational attainment were more likely to migrate compared to females without education (an 18 per cent higher hazard of migrating compared to females without education). The timing of migration showed that pregnant females migrate after five years into the start of their pregnancy (date of conception). In conclusion, females with many children and females who are pregnant or breastfeeding are not likely to migrate. === Thesis (M.A.)-University of KwaZulu-Natal, Durban, 2011.
author2 Nzimande, Nompumelelo.
author_facet Nzimande, Nompumelelo.
Okumu, Catherine Andayi.
author Okumu, Catherine Andayi.
author_sort Okumu, Catherine Andayi.
title Demographic and socio-economic determinants of female migration in rural KwaZulu-Natal.
title_short Demographic and socio-economic determinants of female migration in rural KwaZulu-Natal.
title_full Demographic and socio-economic determinants of female migration in rural KwaZulu-Natal.
title_fullStr Demographic and socio-economic determinants of female migration in rural KwaZulu-Natal.
title_full_unstemmed Demographic and socio-economic determinants of female migration in rural KwaZulu-Natal.
title_sort demographic and socio-economic determinants of female migration in rural kwazulu-natal.
publishDate 2012
url http://hdl.handle.net/10413/6379
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