Abstract
While countries around the world have experienced unprecedented shifts in their population
age structures over the last 70 years, it has only really been over the last 20 years that research
into the impact of the structure of the population on the economy has gained momentum.
Analytically, it is the recognition that engagement in the economy and the resulting economic
ows between individuals vary with age that underpins this impact: children consume more
than they produce; prime working-age cohorts produce more than they consume, transferring
surpluses to others or saving them for old age; and the elderly use transfers from others, asset
income or dissaving to _nance their consumption given low levels of labour income.
These economic ows at each age are quanti_ed by the National Transfer Accounts (NTA)
methodology, providing a view of the so-called generational economy and allowing us to see how
di_erent age groups produce, consume, share, and save resources at a given point in time. NTAs
are constructed from a variety of data sources|including household survey data, administrative
data, national accounts data and population data|to be consistent with National Accounts and
can be thought of as age-disaggregations of various national accounting aggregates. NTAs have
been constructed for a growing number of countries around the world, with South Africa one
of the _rst countries on the African continent to have constructed NTAs.
This thesis utilises the NTA methodology to construct partial or full accounts for South
Africa for _ve years between 1995 and 2015. These accounts are used to analyse three aspects
of the generational economy or economic lifecycle. First, the estimates are used to estimate
the magnitude of South Africa's demographic dividend, the potential economic bene_ts that
arise due to the changing population age structure as the working-age population grows relative
to the total population. Second, the NTA estimates for 2015 are disaggregated by race to
assess di_erences in the economic lifecycle across these groups, which are used as proxies for
socioeconomic status, and to assess the implications of high levels of inequality on the estimates
themselves and on projections of the pro_les into the future. Finally, by incorporating time use
data to estimate time allocations to unpaid housework and care activities for men and women
across the lifecycle, the exclusion of non-market services from the national accounts production
boundary, and therefore from NTA, is addressed, making it possible to properly assess the full
economic contributions of men and women across the life course.
Oosthuizen, M (2021). South Africa's Generational Economy. Afribary. Retrieved from https://track.afribary.com/works/south-africa-s-generational-economy
Oosthuizen, Morne "South Africa's Generational Economy" Afribary. Afribary, 15 May. 2021, https://track.afribary.com/works/south-africa-s-generational-economy. Accessed 25 Nov. 2024.
Oosthuizen, Morne . "South Africa's Generational Economy". Afribary, Afribary, 15 May. 2021. Web. 25 Nov. 2024. < https://track.afribary.com/works/south-africa-s-generational-economy >.
Oosthuizen, Morne . "South Africa's Generational Economy" Afribary (2021). Accessed November 25, 2024. https://track.afribary.com/works/south-africa-s-generational-economy