Title: Inequality in Australia: Does region matter
1Inequality in Australia Does region matter?
- Riyana Miranti, Rebecca Cassells, Yogi Vidyattama
- and Justine McNamara
PRESENTED AT THE 2ND GENERAL CONFERENCE OF THE
INTERNATIONAL MICROSIMULATION ASSOCIATION,
OTTAWA, CANADA, JUNE 8 10, 2009
2Measuring Inequality - Background
- Why we chose this topic ?
- Objectives
- to provide valuable information about regional
inequality at a small area level - to explore another use of spatial microsimulation
and demonstrate its benefits
3What are we going to do
- Measuring inequality at small area using Gini
coefficients - Reasons for use of Gini coefficients
- Most common measure
- Validation purpose publicly available at the
national and state level - Expand previous research with improvements
- disposable household income
- smaller geographical unit than any that has been
previously used - Using spatial microsimulation, as direct data are
not available
4Data source
- Reweighting process uses three sources of data
- 2006 Census
- Survey - SIH 2003-04 and 2005-06
- Validation use 2006 Census data, ABS published
data and SIH 2005-06 - Limit the scope of study to New South Wales (NSW)
and Victoria (Vic) - Unit of analysis small area (Statistical Local
Area)
5Spatial methodology
- Spatial microsimulation SpatialMSM/09C
- Small area weights for every SLA
- Benchmarks variables
- Complex process of spatial microsimulation
6Gini coefficient
- Has a value between zero and one
- Zero means perfect equality, everyone has the
same level of equivalised income - One means perfect inequality, one person holds
all the income - Smaller Gini coefficient more equal
- Equivalised hh disposable income
7Validation of our estimates
- To see whether our Gini coefficient estimates are
reliable - 197 SLAs in NSW, and 198 SLAs in VIC
- Small area validation equivalised gross
household income data, see next slide - Aggregate data validation, at capital city and
balance of state level equivalised disposable
household income data overall looks good.
8Validation small area validation (NSW)
The Spearman rank correlation is 0.958
9Australian map
10Distribution of small area inequality estimates
New South Wales
11Distribution of small area inequality estimates
Sydney
12Distribution of small area inequality estimates
Victoria
13Distribution of small area inequality estimates -
Melbourne
14Inequality and small area characteristics
- Econometric analysis of determinants of
inequality is beyond the scope of this paper.
However - Previous research in Australia discusses several
factors associated with inequality - We find some similarities but also differences in
characteristics among high inequality areas no
One story fits all - Need to look further into particular SLAs, which
ones underlying difference
15Conclusion
- Application of spatial microsimulation
- The validation shows that weights give reasonable
results - Does region matter ? Yes. There are substantial
variations in inequality at small area level - May help the policy makers/service providers to
understand differences in order to better develop
programs/policy. - Future work ? Econometric estimation, spatial
microsimulation in order to model policy changes
16www.natsem.canberra.edu.au