6525.0 - Experimental Estimates of Imputed Rent, Australia, 2013-14  
ARCHIVED ISSUE Released at 11:30 AM (CANBERRA TIME) 16/12/2015   
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COMPARISON OF THE NEW AND PREVIOUS EXPERIMENTAL METHODOLOGIES

The effectiveness of approaches taken to impute a market rent for individual owner-occupied dwellings is dependent on the availability of data on price determining property characteristics in the private rental market. Data are not available in SIH at the individual dwelling level to better define location in terms of attributes such as views or beach frontage and proximity to employment, transport, and shops/services. Data are also not available on the value of rented dwellings, nor for some important physical characteristics of the dwellings such as outer-wall construction, availability of garaged or off-street parking, size of block or number of bathrooms.

In the previous methodology, hedonic regression was used to estimate the market value of the rental equivalent for owner-occupied dwellings and other subsidised tenure types. Data from the SIH on reported rents paid by private market renters was regressed on the characteristics of their rented dwellings e.g. location and dwelling structure. The estimated coefficients were then applied to the corresponding characteristics of owner-occupied and other subsidised tenure dwellings to produce imputed values of the gross rental equivalence for these dwellings.

A shortcoming of the hedonic regression rental equivalence approach is that reliable results cannot be produced when rental markets are limited or do not exist (recognised in the Canberra Group Handbook on Household Income Statistics). In the SIH, rental dwellings are very limited for high value housing stock. An extrapolation method was used to partially compensate for this problem but further analysis indicated that it resulted in a substantial underestimate of the imputed rent for these owner-occupied dwellings.

The inclusion of dwelling price data in the new experimental methodology for owner-occupied dwellings overcomes this problem, as well as taking better account of the quality differences that are likely to exist between many owner-occupied and rental dwellings with other similar characteristics. For example, owner-occupied dwellings may generally have higher quality fittings or building materials, or be maintained to a higher standard than many rental dwellings and this would be expected to be reflected in the value of the dwelling and in the market rent it would be likely to attract.

EXPERIMENTAL ESTIMATES OF IMPUTED RENT FOR OWNER-OCCUPIED DEWLLINGS

The distribution of gross imputed rent has changed between the previous and new experimental methodologies. As shown in Graph 1, the new methodology has resulted in a more dispersed distribution.

In the previous methodology, hedonic regression could only be used when there were sufficient rental properties to use the regression model, which was at a much lower value than rents imputed using the new methodology.

Graph 1. Distribution of gross imputed rent for owner-occupied dwellings, new and previous experimental methodologies, 2011‒12
Graph: Distribution of gross imputed rent for owner-occupied dwellings, 2011-12

Table 1 shows the impact of the new experimental gross imputed rent methodology for selected percentiles for owner-occupied dwellings. The total average increase for all households between the new and previous methodologies is 16%, due mostly to the better estimation of market rents for higher value dwellings. The gross imputed rent at the 80th and 90th percentiles is more that 25% higher in the new methodology compared to the previous methodology.

Table 1. Gross imputed rent at top of selected percentiles for owner-occupied dwellings, new and previous experimental methodologies, 2011–12


New
methodology
Previous
methodology
Difference
Percentiles
$ per week
$ per week
$ per week
%

P10
192
239
-47
-20
P20
249
267
-18
-7
P30
290
293
-3
-1
P40
328
319
9
3
P50
367
343
24
7
P60
414
370
45
12
P70
476
402
74
18
P80
566
446
120
27
P90
742
558
184
33
All households
445
374
71
19



Table 2 shows the impact of the new experimental methodology on the equivalised disposable household income (EDHI) including imputed rent for owner-occupied dwellings. As the housing costs used to calculate net imputed rent have not changed in the new model, the impact is solely due to the change in gross imputed rent. In 2011‒12, the EDHI (including imputed rent) increased by an average of $43 per week (4%) for all households. The greatest impact was on the highest quintile (up by 6%).

Table 2. Distribution of equivalised disposable household income (incl. imputed rent), new and previous experimental methodologies, 2011–12


New
methodology
Previous
methodology
Difference
$ per week
$ per week
$ per week
%

Mean income
Lowest quintile
448
446
2
0
Second quintile
713
694
18
3
Third quintile
923
893
29
3
Fourth quintile
1 202
1 156
46
4
Highest quintile
2 118
1 996
121
6
All households
1 081
1 037
43
4
Income at top of selected percentiles
P10
496
500
-4
-1
P20
611
600
10
2
P30
710
695
15
2
P40
812
792
20
3
P50
920
889
31
3
P60
1 041
1 005
36
4
P70
1 189
1 149
40
3
P80
1 419
1 358
61
4
P90
1 773
1 702
72
4



Table 3 shows that the new experimental methodology for calculating gross imputed rent has a similar impact on both gross imputed rent and EDHI (including imputed rent) estimates for all SIH cycles from 2003–04 to 2011–12.

Table 3. Comparison of income estimates for owner-occupied dwellings, new and previous methodologies


Mean gross imputed rent
Mean equivalised disposable household income (incl. imputed rent)


New methodology
Previous methodology
Difference
New methodology
Previous methodology
Difference
Period
$ per week
$ per week
$ per week
%
$ per week
$ per week
$ per week
%

2003–04
317
264
53
20
827
795
33
4
2005–06
334
286
48
17
908
878
30
3
2007–08
382
317
65
21
1 058
1 019
39
4
2009–10
418
357
61
17
1 053
1 016
37
4
2011–12
445
374
71
19
1 081
1 037
43
4
2013–14
491
na
na
na
1 204
na
na
na



REFERENCES

UNECE (2011), Canberra Group Handbook on Household Income Statistics, Second Edition, ECE/CES/11, Geneva.