Keyword data search

Select the appropriate letter to list the keywords starting with that letter.


Gauteng State of the Youth Interviews (GSYI) 2018-19: Gauteng, South Africa

The data set reflects the focus group discussion that aimed to unpack the discursive construction of perceptions on the state of the youth in the Gauteng Province, as well as obtain views on the Tshepo 1 Million programme, an employment support entity of the Gauteng Office of the Premier.

Fifteen participants participated in the discussion.

South African Social Attitudes Survey (SASAS) 2013: Questionnaire 1 Work and Unemployment - All provinces

Topics covered in the questionnaire are: work and unemployment, respondent characteristics, household characteristics, personal and household income variables.

The data set for dissemination contains 2885 cases and 262 variables.

Spatial aspects of unemployment in South Africa 1991-2007 (UNEMPL): Municipalities - All provinces

This is aggregated data of individuals or households. The data originates from the South African censuses of 1991, 1996 and 2001, as well as the community survey of 2007. The geographical units were standardised to the 2005 municipal boundaries so that spatial measuring was consistent. The data therefore covers the whole country at a municipal level for different time periods. The major variables focus on employment status.

The data set consists of 32 variables and 257 cases. It contains the same socio-economic variables for different time periods, namely 1991, 1996, 2001 and 2007.

Combined ranking - municipalities were ranked for each year, i.e. 1991, 1996, 2001 and 2007, in terms of unemployment rate and assigned a rank value. There is also a combined unemployment rank value for all years and all municipalities.

Population density - this was calculated by dividing the total population of a municipality in 1991 by the area and the answer is expressed as number of people per square kilometer.

The linking of different census geographies was done by using areal interpolation to transfer data from one set of boundaries to another. The 2005 municipality boundaries were used as the common denominator and it is part of a spatial hierarchy developed by Statistics SA for the 2001 census.

Spatial aspects of unemployment in South Africa 1991-2011 (UNEMPL): Municipalities - All provinces

This is aggregated data of individuals or households. The data originates from the South African censuses of 1991, 1996, 2001 and 2011, as well as the community survey of 2007. The geographical units were standardised to the 2005 municipal boundaries so that spatial measuring was consistent. The data therefore covers the whole country at a municipal level for different time periods. The major variables focus on employment status.

The data set consists of 156 variables and 257 cases. It contains the same socio-economic variables for different time periods, namely 1991, 1996, 2001, 2007 and 2011.

Combined ranking - municipalities were ranked for each year, i.e. 1991, 1996, 2001, 2007 and 2011, in terms of unemployment rate and assigned a rank value. The combined unemployment ranking is calculated by adding up the ranking per individual year.

Population density - this was calculated by dividing the total population of a municipality in 1991 by the area and the answer is expressed as number of people per square kilometer.

Urban - the number of urban people in an area in a specific year.

Rural - the number of rural people in an area in a specific year.

Per capita income - the per capita income in a specific area and year.

The linking of different census geographies was done by using areal interpolation to transfer data from one set of boundaries to another. The 2005 municipality boundaries were used as the common denominator and it is part of a spatial hierarchy developed by Statistics SA for the 2001 census.