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Indexes

REMLab: Discontinued
According to the best global practices, residential and commercial real estate price indices are calculated using several measures, namely the Laspeyres index or the Paasche index. Another popular measure, the Fisher real estate index is a combination of the two. These indices heavily depend on the
available sample and do not take into account sample volatility across time (for example, the quality of purchased units in the sample may increase over time, which will be reflected in higher prices). One way of remedying this issue is to construct a standardized real estate unit in each time period (using a hedonic regression technique) and to use this unit to obtain quality-adjusted indices. The latter indices are called the Laspeyres hedonic imputation index and the Paasche hedonic imputation index (Handbook on Residential Property Price Indices, Eurostat Methodologies and Working Papers, 2013). To implement this methodology, we first determine the characteristics of a “typical” real estate unit in each month. This is done for both real estate categories (residential and commercial). For example, to determine a typical flat in any given month we calculated the median of the log area of the property advertised in that month, mode of renovation type, mode of district, median of the number of bedrooms, median of the number of bathrooms, and median of the number of balconies. Similarly, to determine a typical commercial area, we calculated the median of the log area of the property, mode of renovation type, mode of district, median of the number of rooms, and median of floor. Second, we construct a linear regression model on the data in each month using unit price in log form as a dependent variable and controlling for various characteristics of the real estate unit. In the case of flats, we control for the following: the log area of the property, type of renovation (We combine nine categories (black frame, white frame, not finished white frame, no renovation, renovation needed, renovated long ago, renovation in progress, renovated, newly renovated, euro-renovation) into three renovation types: frame, old, and new), district (Vake-Saburtalo, Old Tbilisi, Isani-Samgori, Didube-Chughureti and Gldani-Nadzaladevi), number of bedrooms, number of bathrooms and number of balconies. In the case of commercial units, the log area, type of renovation, district, number of rooms, and the floor the property is on were used as control variables. In short, the general exposition of the model is the following: Where Pt is the price of the real estate unit in period t, Z1, ..., ZK is the characteristics vector of the unit, and is the error term. (The dependent variable is transformed due to the fact that real estate prices tend to have a log-normal distribution). The regression coefficients tell us how different characteristics of the real estate unit (e.g. location, number of rooms, etc.) affect the price of the property. Clearly, when we repeat the regression for every month, we will obtain different estimates of the coefficients for each month. The coefficient estimates and the characteristics of a “typical” real estate unit are then combined to calculate both the Laspeyres and Paasche monthly indices. The two indices differ in the way they combine the coefficients and the “typical” unit characteristics. The exact formula for the Laspeyres hedonic imputation index is: Where a vector is the standardized real estate unit of period (the base period. March 2013 was taken as the base month). As one can see, the Laspeyres index keeps the unit characteristics constant over time. It takes the “typical” housing unit from the base period (March 2013 in our sample) and compares the price of this unit in any given month t to its price in the base month. The Laspeyres index answers the question: what would be the relative price today of a real estate unit that was typically offered for sale (or rent) in the base month? The Paasche hedonic imputation index is somewhat different: The Paasche index takes the characteristics of a “typical” real estate unit advertised in month t, and compares the current price of this unit to the price it would have had in the base month. Essentially the Paasche index answers the question: what is the price of a typical real estate unit today relative to the price of the same unit in the base month? Both of these indices have advantages and disadvantages. The Laspeyres index could possibly overstate any price increase, as it would not account for substitutions towards cheaper (e.g. smaller or in a less prestigious area) real estate units as prices increase. At the same time, the Paasche index could understate any price increase for the same reason – it would “allow” people to substitute lower quality housing options as prices go up. The best way to reconcile both measures is to obtain a Fisher-type hedonic imputation index – the geometric average of the Laspeyres and Paasche indices: The Fisher index is used as the main indicator of real estate price movement in our report.
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Real Estate Market Highlights, #15 | October-December 2019
17 February 2020

In comparison to Q3 2019, the GEO real property market increased by 4.7% in Q4 2019. While the annual increase was observed at 3.0% (YoY) compared to Q4 2018. Tbilisi dominated the real property market with a 40.7% share in total sales in Q4 2019. The Tbilisi market was followed by Adjara and Kakheti, with a respective 12.4% and 12.2% of GEO sales.

Real Estate Market Highlights, #14 | July-September 2019
01 October 2019

In comparison to Q2 2019, the GEO real property market increased by 3.1% in Q3 2019. While, the annual increase was more pronounced at 7.0% (YoY) compared to Q3 2018.

Real Estate Market Highlights, #13 | January-March 2019
11 June 2019

In comparison with Q4 2018, the GEO real property market dropped by 15.2% in Q1 2019. While the annual increase was more pronounced at 3.7% (YoY), compared to Q1 2018. Tbilisi dominated the real property market with a 41.8% share in total sales in Q1 2019. The Tbilisi market was followed by Kakheti and Adjara, with a respective 12.6% and 10.9% proportion of GEO sales.

Real Estate Market Highlights, #12 | October-December 2018
06 May 2019

The GEO real property market grew by 8.8% in Q4 2018, in comparison with Q3 2018. While the annual increase was more pronounced at 22.3% (YoY), in comparison with Q4 2017.

Real Estate Market Highlights, #11 | July-September 2018
24 December 2018

The GEO real property market grew by 2.4% in Q3 2018, in comparison with Q2 2018. While the annual increase was more pronounced at 24.3% (YoY), in comparison with Q3 2017. Tbilisi dominated the real property market with a 44.4% share in total sales in Q3 2018.

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