The Reserve Bank is compiling quarterly house price index
(HPI) (base: 2010-11=100) for ten major cities, viz.,
Mumbai, Delhi, Chennai, Kolkata, Bengaluru, Lucknow,
Ahmedabad, Jaipur, Kanpur and Kochi. Based on these
city indices, an average house price index representing all-
India house price movement is also compiled. These indices
are based on the official data of property price transactions
collected from registration authorities of respective state
governments. This article presents the trends in price based
on HPI in India for the period Q1:2010-11- Q4:2013-
14. Also, for understanding the price movements across
different size classes, this article presents size wise house
price indices and their trends.
Introduction
House is not just an asset but also a durable
consumption good for households, providing shelter
and other services. A change in the house price affects
the households’ perceived lifetime wealth and hence
influences the spending and borrowing decisions of
households. An increase in the house price raises the
value of the housing relative to construction costs;
hence a new construction is profitable when house
price rises above the construction costs. Residential
investment is, therefore, positively related with house
price increase. House prices also affect bank lending
and vice versa. Further, house price gains increase
housing collateral. The potential two-way link between
bank lending and house prices give rise to mutually
reinforcing cycles in credit and real estate markets.
These indicate that house prices may affect economic
activity through private consumption of households,
residential investment and credit allocation of the
financial systems. Thus, understanding the price
trends of this segment of asset class is important for
monetary policy formulation.
Beginning with Mumbai city, the Reserve Bank
initiated the work of compiling a house price index
(HPI) in 2007 and brought out a quarterly HPI for Mumbai city (base: 2002-03=100). Over the quarters,
the coverage has been extended by incorporating
9 more major cities, viz., Delhi, Chennai, Kolkata,
Bengaluru, Lucknow, Ahmedabad, Jaipur Kanpur
and Kochi and the base is shifted to 2010-11=100.1
Besides separate HPI for individual cities, an average
HPI representing all-India house price movement is
also compiled.
This article presents the trends in price based on
HPI in India for the period Q1:2010-11- Q4:2013-14. It
also focuses on the house price movements in housing
submarkets classified by size of the house. For the first
time, this exercise will give an idea on how prices of
small, medium and large houses have moved in the
recent period. In general, housing submarkets could be
segmented by a variety of factors, such as by demand
and supply factors, geographical/spatial, structural and
neighborhood characteristics. Specifically a housing
submarket can be defined as “a set of dwellings that
are reasonably close substitutes of one another, but
relatively poor substitutes for dwellings in other
submarkets”2. In a segmented housing market,
housing price dynamics need not be similar in each
segment. The main purpose of delineating a housing
market into segments is to identify distinct groups
which could help stakeholders channelize and focus
on different issues. One major contribution of market
segmentation is to provide a more accurate house
price structure across size classes.
The Reserve Bank’s HPI uses the data on
transacted houses at the point of Registration of
houses; the data are collected from the registration
departments of respective state governments. The
HPI is developed on the basis of this registration
price data and estimated as a stratified weighted
average measure, stratification being done according
to administrative zones within a city. This measure
captures prices relating only to those houses sold
during a period and not relevant to all houses in the economy. As this information set contains data
on floor space area, in this article, size-wise house
price indices are compiled and presented using the
methodology described in the subsequent section.
This article is organised as follows. Section 2 explains the methodology for the compilation of
aggregate house price indices as well as size-wise price
indices. The trends in HPI in India are discussed in
Section 3. Limitations are presented in Section 4.
Section 5 concludes.
2. Methodology
The methodology for the compilation of
aggregate house price is discussed in detail in the RBI
Bulletin article of October 20121. Aggregate House
Price Index is a weighted average price index using
Laspeyres’ method with 2010-11 as the base year.
First, the simple average of price (per square meter) of
houses in each category, classified by small, medium
and large for each ward/administrative zone in each
quarter based on floor space area (FSA) is calculated.
Second, the proportion of number of houses
transacted in the three categories of FSA within a
ward/zone during the period April 2010 – March 2011
is taken as the weights. Then, based on an average
per square meter price for three FSA category houses
in each ward/zone, price-relatives are calculated for
each quarter. The price relative is nothing but a ratio
of current period price to the base period price. The
quarterly ward/zone weighted average price relatives
are calculated next. These weighted relative prices are
again averaged, using the proportion of number of
houses transacted in each ward to the total number of
houses transected in the city during the period April
2010 – March 2011 as the weights. The city-wise price
indices are averaged using the population proportion
(based on 2011 census) of the ten cities to its total to
obtain the all-India index.
2.1 Size-wise price indices
For compilation of size class-wise price index at
all India level, city level indices of small, medium and
large houses are constructed first. For compiling the
city level size-wise price indices, house transactions
in each ward/zone for each city is classified to small, medium and large3 based on the floor space area.
At city level, for each size category price index is
estimated as a weighted average price index, again
using Laspeyres’ method. The detailed methodology
is explained as below.
First, the median price (per square meter) of
the transacted houses (Pijt) in each size category(i) in
ward/zone (j) at quarter t is calculated. Then, based
on an average per square meter price for three FSA
category houses in each ward/zone, price-relatives
are calculated for each quarter. The price relative is
basically the ratio of current period price to the base
period price. Price relative per square meter for the
ithcategory, jth ward/ zone, tth quarter is given by
where
Pi,j,0 is the price in the base period. Then
for each of the category - small, medium and large -
these relative prices are again averaged, using the
proportion of number of houses transacted in each
ward to the total number of houses transacted in
the city during the period April 2010 – March 2011
as the weight (wj). The following formula is used
for constructing the city-wise price indices for each
category (small, medium and large) for tth quarter
Where i=category of house (small/medium/
large) and n=number of ward/zone in each city. The
city-wise price indices for each of the category are
averaged using the population proportion (based on
2011 census) of the ten cities to its total to obtain the
all-India index for small, medium and large category
of house.
3. Trends in HPI
Overall house price index growth rates at all-
India level are presented in Table 1. It is observed that
index of house price, had been growing at an annual
average rate of about 20 per cent (y-o-y) in 2011-12 and 2012-13. However, the pace of growth in the
average house prices slowed in 2013-14 at 12.7 per
cent, plausibly reflecting a correction in trends on the
back of subdued demand. For the latest Q4 of 2013-14
quarter, the y-o-y increase in the House Price Index at
the all-India level was 11.4 per cent compared to 10.5
per cent in the preceding quarter.
Table 1: House Price Index and y-o-y change – All-India |
Quarter |
House Price Index |
Y-o-Y change |
Q1: 10-11 |
94.2 |
NA |
Q2: 10-11 |
99.8 |
NA |
Q3: 10-11 |
99.4 |
NA |
Q4: 10-11 |
106.6 |
NA |
Q1: 11-12 |
116.0 |
23.1 |
Q2: 11-12 |
119.4 |
19.7 |
Q3: 11-12 |
125.5 |
26.2 |
Q4: 11-12 |
134.1 |
25.8 |
Q1: 12-13 |
142.6 |
23.0 |
Q2:12-13 |
147.1 |
23.2 |
Q3:12-13 |
157.0 |
25.1 |
Q4:12-13 |
160.8 |
19.9 |
Q1:13-14 |
162.3 |
13.8 |
Q2:13-14 |
169.2 |
15.1 |
Q3:13-14 |
173.4 |
10.5 |
Q4:13-14 |
179.1 |
11.4 |
The HPIs and year-on-year variation in prices
across various cities are presented in Table 2 and
Table 3 respectively. The growth in house prices has
moderated in 2013-14 for Mumbai, Delhi, Kolkata,
Jaipur and Kanpur. For instance, the house price in the
city of Mumbai increased on an average annual basis
by 30.0 and 18.5 per cent respectively for 2011-12 and
2012-13. This has declined to 8.7 per cent in 2013-14.
However, in the cities like Bengaluru and Ahmedabad
house prices grew at relativity slower pace during
2012-13, but picked up momentum in the 2013-14.
Kolkata and Delhi which picked up momentum in the
2012-13 showing some moderation in price increase
in 2013-14.
The size-wise HPI at all India level as well as
point-to-point annual inflation rates are presented
in Table 4. The prices in the small size category have
gone up at an average annual rate of 23.7 per cent in
the last 4 years. The average increase has been lower
for medium and large categories at 18.2 and 18.6 per
cent, respectively. However, the price variations are
more pronounced in the small-size category compared
to the other two size categories. In 2013-14, the price
increase in the small and medium size category
moderated to 8.7 and 10.7 per cent respectively, while
that in the large size category remained almost at the
average level.
Table 2: House Price Index - City wise |
Quarter |
Mumbai |
Delhi |
Bengaluru |
Ahmedabad |
Lucknow |
Kolkata |
Chennai* |
Jaipur |
Kanpur |
Kochi |
Q1: 10-11 |
90.6 |
100.7 |
98.6 |
93.2 |
88.8 |
77.9 |
102.7 |
95.3 |
91.7 |
89.6 |
Q2: 10-11 |
99.7 |
95.6 |
97.9 |
102.5 |
98.7 |
103.2 |
109.5 |
99.0 |
99.4 |
92.4 |
Q3: 10-11 |
100.9 |
92.1 |
97.9 |
102.0 |
104.7 |
106.6 |
94.6 |
103.6 |
103.7 |
113.8 |
Q4: 10-11 |
108.8 |
112.1 |
105.5 |
102.2 |
107.8 |
112.3 |
93.1 |
102.1 |
105.1 |
104.2 |
Q1: 11-12 |
122.1 |
126.8 |
110.7 |
121.3 |
118.0 |
103.0 |
101.2 |
106.3 |
104.7 |
120.9 |
Q2: 11-12 |
131.4 |
124.8 |
107.8 |
130.4 |
123.1 |
105.0 |
110.4 |
109.6 |
106.8 |
105.0 |
Q3: 11-12 |
122.8 |
136.7 |
138.6 |
137.1 |
131.9 |
103.2 |
110.7 |
108.3 |
108.5 |
103.1 |
Q4: 11-12 |
143.5 |
158.2 |
133.3 |
141.0 |
129.4 |
106.1 |
108.2 |
108.6 |
114.9 |
97.8 |
Q1: 12-13 |
147.6 |
177.3 |
133.3 |
140.8 |
136.4 |
135.2 |
119.2 |
113.4 |
114.4 |
98.8 |
Q2:12-13 |
148.1 |
183.2 |
136.6 |
146.4 |
156.6 |
149.1 |
117.8 |
117.4 |
106.0 |
127.5 |
Q3:12-13 |
158.9 |
200.7 |
141.2 |
150.6 |
169.3 |
162.5 |
137.6 |
118.9 |
92.8 |
136.5 |
Q4:12-13 |
159.5 |
213.1 |
141.9 |
155.0 |
166.2 |
169.4 |
137.4 |
129.4 |
90.9 |
124.2 |
Q1:13-14 |
160.0 |
214.8 |
142.3 |
161.9 |
173.9 |
171.8 |
138.3 |
129.4 |
82.4 |
127.0 |
Q2:13-14 |
169.2 |
215.7 |
150.4 |
171.7 |
186.7 |
173.5 |
150.0 |
128.0 |
92.0 |
161.6 |
Q3:13-14 |
169.2 |
211.1 |
169.3 |
172.6 |
203.6 |
168.2 |
174.3 |
127.3 |
81.6 |
189.4 |
Q4:13-14 |
169.2 |
229.3 |
184.3 |
169.4 |
212.5 |
169.8 |
179.3 |
120.0 |
78.4 |
166.2 |
Note: * Chennai Index is based on both residential and commercial properties |
Table 3: House Price Index (y-o-y change in per cent) - City wise |
Quarter |
Mumbai |
Delhi |
Bengaluru |
Ahmedabad |
Lucknow |
Kolkata |
Chennai* |
Jaipur |
Kanpur |
Kochi |
Q1: 11-12 |
34.7 |
25.9 |
12.2 |
30.1 |
32.9 |
32.3 |
-1.5 |
11.5 |
14.1 |
34.9 |
Q2: 11-12 |
31.8 |
30.6 |
10.1 |
27.2 |
24.7 |
1.8 |
0.8 |
10.6 |
7.3 |
13.6 |
Q3: 11-12 |
21.7 |
48.5 |
41.5 |
34.4 |
26.0 |
-3.2 |
17.0 |
4.5 |
4.7 |
-9.5 |
Q4: 11-12 |
31.9 |
41.2 |
26.4 |
37.9 |
20.1 |
-5.5 |
16.2 |
6.4 |
9.3 |
-6.1 |
Q1: 12-13 |
20.9 |
39.8 |
20.5 |
16.0 |
15.6 |
31.2 |
17.8 |
6.7 |
9.3 |
-18.2 |
Q2:12-13 |
12.7 |
46.8 |
26.7 |
12.2 |
27.2 |
42.0 |
6.8 |
7.1 |
-0.7 |
21.5 |
Q3:12-13 |
29.4 |
46.8 |
1.9 |
9.9 |
28.3 |
57.5 |
24.2 |
9.9 |
-14.5 |
32.4 |
Q4:12-13 |
11.2 |
34.7 |
6.4 |
9.9 |
28.4 |
59.7 |
27.1 |
19.1 |
-20.9 |
27.0 |
Q1:13-14 |
8.4 |
21.1 |
6.7 |
15.1 |
27.6 |
27.1 |
16.0 |
14.1 |
-28.0 |
28.5 |
Q2:13-14 |
14.3 |
17.8 |
10.1 |
17.3 |
19.2 |
16.4 |
27.3 |
9.1 |
-13.2 |
26.7 |
Q3:13-14 |
6.4 |
5.2 |
19.9 |
14.6 |
20.3 |
3.5 |
26.7 |
7.0 |
-12.1 |
38.8 |
Q4:13-14 |
6.1 |
7.6 |
29.8 |
9.3 |
27.9 |
0.2 |
30.4 |
-7.3 |
-13.8 |
33.8 |
Note: * Chennai Index is based on both residential and commercial properties. |
Table 4: Size-wise House Price Index and y-o-y change – All-India |
Quarter |
House Price Index |
Y-o-Y Change |
Small |
Medium |
Large |
Small |
Medium |
Large |
Q1: 10-11 |
95.0 |
95.4 |
92.3 |
|
|
|
Q2: 10-11 |
99.6 |
100.4 |
101.7 |
|
|
|
Q3: 10-11 |
97.3 |
97.7 |
100.4 |
|
|
|
Q4: 10-11 |
108.1 |
105.3 |
105.6 |
|
|
|
Q1: 11-12 |
119.4 |
116.0 |
113.0 |
25.7 |
21.6 |
22.5 |
Q2: 11-12 |
121.7 |
118.6 |
113.5 |
22.2 |
18.1 |
11.6 |
Q3: 11-12 |
125.3 |
122.5 |
121.4 |
28.7 |
25.4 |
20.9 |
Q4: 11-12 |
135.4 |
130.1 |
128.1 |
25.3 |
23.5 |
21.4 |
Q1: 12-13 |
156.6 |
143.5 |
130.9 |
31.2 |
23.7 |
15.8 |
Q2:12-13 |
168.9 |
145.4 |
136.8 |
38.8 |
22.6 |
20.5 |
Q3:12-13 |
182.5 |
150.8 |
146.7 |
45.7 |
23.1 |
20.8 |
Q4:12-13 |
188.4 |
157.9 |
149.0 |
39.1 |
21.4 |
16.3 |
Q1:13-14 |
179.6 |
154.8 |
158.0 |
14.7 |
7.8 |
20.8 |
Q2:13-14 |
189.0 |
162.9 |
166.4 |
11.9 |
12.0 |
21.6 |
Q3:13-14 |
194.4 |
169.6 |
165.9 |
6.5 |
12.5 |
13.1 |
Q4:13-14 |
193.8 |
174.0 |
177.3 |
2.9 |
10.2 |
19.0 |
4. Limitation of the data and methodology
The HPI presented here uses registration price
data. It is often believed that registered prices of
houses are in general underestimated due to various
reasons like high registration fees and stamp duty,
obligations for the payment of property tax, etc.
Further, the differences in the time gaps between the
actual transactions and registrations also do not always
follow the similar pattern across different states.
Moreover, registrations of the properties are done
taking into account different criterion in different
states, some of which are (a) partial consideration of
un-divided share of land (b) partial consideration of
sale of terrace rights, (c) consideration of agreement to sale at the time booking for total price, (d) sale deed
only post completion of property. On the other hand,
the registration procedure and records maintenance
are not computerized in some states and the records in
most states are maintained in the regional languages
which necessitates further work with respect to
bringing them into common format. Getting segregated
transactions on land, agreement, whether a land is an
agricultural land, sale deed, power of attorney etc. is
another challenge. The ten-city average HPI compiled
using Laspeyres’ approach is a weighted average of
city-level HPIs. Ideally, the number of transactions at
city level could have been used as weight. However,
in the existing data collection mechanism, separate
information on the type of the property (residential/
commercial) of Chennai is not available. As a result,
the proportion of population of the city (to the total
population of ten cities together) is used as the weight,
as a proxy to the number of transactions.
5. Conclusion
This article presents the trends in house prices in
India in the recent period based on a HPI. Further, for
the first time, it presents an approach for compiling a
size-wise house price index in Indian context. These
indices are based on the official data received from
registration authorities of various state governments
and are compiled at city as well as all India level.
Recent trends in the house price index reveal that
increase in the house price which was steep in the
last few years has moderated in 2013-14. In particular,
the house price increase in the small and medium
size category has moderated more sharply compared
to the large size category.
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