The Ethiopian real estate industry has grown in the previous two decades, especially in the capital city of the country and regional capitals, including Bahir Dar. Real estate prices have doubled and even tripled in a few years because of different factors. Thus, the purpose of this study is to analyse the factors affecting residential real estate prices in Ethiopia, particularly in Bahir Dar City. For this purpose, the study used both purposive and stratified random sampling techniques. Descriptive and inferential statistics were used to analyze the data, and the ordinary least squares method was used to identify the factors that influence residential real estate prices. The hedonic regression model result reveals that R2 statistics (0.880) indicate that 88% of the variation in residential real estate prices can be explained by variation in the independent variables. Hedonic regression model results revealed that plot size, floor area, number of rooms, age of the house, external wall finishing material, ceiling finishing material, the direction of the house, distance of the property from the main road, and involvement of brokers in the transaction process, were major micro-factors that had a significant effect on residential real estate prices at the 5% level of significance. Furthermore, the interview results show that the challenges faced by real estate developers mostly include loans and aid issues, high-interest rates, mortgage restrictions, the financial capacity of real estate companies, delays in plan approvals, and rising costs of construction materials are among the major challenges affecting investment in real estate. The study suggests that the municipality of Bahir Dar City should provide an adequate supply of land to real estate developers, improve infrastructure development, and federal and regional governments should provide the credit lending mechanism by lowering interest rate especially for low-income class.
Published in | International Journal of Business and Economics Research (Volume 13, Issue 3) |
DOI | 10.11648/j.ijber.20241303.11 |
Page(s) | 46-63 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
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Copyright © The Author(s), 2024. Published by Science Publishing Group |
Hedonic Regression Model, Micro-Factors, Property Prices, Residential Real Estate
Real Estate Company Name | Type of Real Estate Development | Investment status | Site(s) | Total transacted properties | Sample size = (NJ/N)*n |
---|---|---|---|---|---|
ACAPULIKO | Residential | Operational | Dagmawi Minilik | 110 | 49=(110/300)*134 |
MULUGETA | Residential | Operational | Dagmawi Minilik | 190 | 85=(190/300)*134 |
Total | 300 | 134 |
Short name | Variable name | Data Type | Measurement | Description of variable | Expected sign |
---|---|---|---|---|---|
Log_ RREP | Residential real estate price | Numerical | Scale | Defined as natural logarithm of residential real estate price. It is a continuous variable measured in Ethiopian Birr. | Dependent variable |
Log_ GPA | Gross plot area | Numerical | Scale | Log-transformed value of gross plot area. It is a continuous variable measured in square meter | (+) |
Log_ FLA | Floor area | Numerical | Scale | Log-transformed value of floor area. It is a continuous variable measured in square meter | (+) |
Log_ NR | Number of rooms | Numerical | Scale | Log-transformed value of the number of rooms. It is a continuous variable measured in numbers. | (+) |
Log_ AH | Age of the house | Numerical | Scale | Log-transformed value of the age of house. It is measured in years | (-) |
FFM | Floor finishing material | Categorical | Ordinal | It is a categorical variable based on the quality of material Ceramic tile=1, Cement screed=2 | (+) |
EWFM | External wall finishing material | Categorical | Ordinal | It is a categorical variable based on the quality of material 1=Quartz paint, 2= Plastered, 3=Granit paint | (+) |
BR | Broker/Agent | Dummy | Nominal | It is a dummy variable 1= indicates transaction is facilitated by brokers and 0= indicates transaction is held without involvement of brokers | (+) |
CFM | Ceiling finish material | Categorical | Ordinal | It is a categorical variable based on the quality of material 1=Gypsum, 2= Plastic | (+) |
DH | Direction aspect of the house | Dummy | Nominal | It is a dummy variable 1= East aspect, 0= Non- East aspect | (-) |
Log_ DMR | Distance of property from the main road | Numerical | Scale | Log-transformed value of distance from the property to the main road. It is a continuous variable measured in meter | (-) |
LG | Land Grade | Categorical | Ordinal | It is a categorical variable 1= First grade, 2=Second grade, 3= Third grade, 4= Fourth grade | (+) |
RT | Accessible Road Type | Categorical | Ordinal | It is a categorical variable 1= Asphalt, 2= Cobblestone, 3= Gravel, 4= Earthen | (+) |
Descriptive Statistics | |||||
---|---|---|---|---|---|
Continuous variable | N | Minimum | Maximum | Mean | Std. Deviation |
Residential Real Estate Sales Price in birr | 103 | 1,200,000 | 12,500,000 | 4,567,106.80 | 283,2045.367 |
Gross plot area in square meters (m2) | 103 | 200 | 500 | 295.94 | 61.813 |
Floor area in square meters (m2) | 103 | 100 | 250 | 123.08 | 24.324 |
Age of the house | 103 | 1 | 15 | 5.13 | 3.824 |
Number of rooms | 103 | 3 | 5 | 4.17 | .772 |
Distance from the property to the main road in meter | 103 | 234 | 817 | 543.95 | 144.213 |
Valid N (listwise) | 103 |
Categorical variable | Frequency | Percent | |
---|---|---|---|
Broker involvement in the transaction process | No | 19 | 18 |
Yes | 84 | 82 | |
Total | 103 | 100 | |
External wall finishing materials | Quartz paint | 87 | 86 |
Plastered with cement | 16 | 14 | |
Total | 103 | 100 | |
Floor finishing materials | Ceramic tile | 88 | 86 |
Cement screed | 15 | 14 | |
Total | 103 | 100 | |
Ceiling finishing materials | Gypsum | 89 | 87 |
Plastic | 14 | 13 | |
Total | 103 | 100 | |
Direction of the house | East Aspect | 66 | 64 |
Non-East Aspect | 37 | 36 | |
Total | 103 | 100 | |
Land Grade | Grade_ 1 | 32 | 31 |
Grade_ 2 | 53 | 52 | |
Grade_ 3 | 18 | 17 | |
Total | 103 | 100 | |
Accessible Road Type | Asphalt | 8 | 7.8 |
Cobblestone | 8 | 7.8 | |
Gravel road | 33 | 32 | |
Earthen | 54 | 52.4 | |
Total | 103 | 100 |
Tests of Normality | ||||||
---|---|---|---|---|---|---|
Kolmogorov-Smirnova | Shapiro-Wilk | |||||
Statistic | Df | Sig. | Statistic | Df | Sig. | |
Unstandardized Residual | .054 | 103 | .200* | .992 | 103 | .899 |
Model | Collinearity Statistics | ||
---|---|---|---|
Tolerance | VIF | ||
1 | (Constant) | ||
Broker involvement in the transaction process | 0.711 | 1.407 | |
External wall finishing material | 0.477 | 2.095 | |
Floor finishing material | 0.586 | 1.706 | |
Ceiling finishing material | 0.739 | 1.353 | |
Direction of the house (East=1 Non-East=0) | 0.753 | 1.328 | |
Land grade | 0.685 | 1.460 | |
Accessible road type | 0.865 | 1.156 | |
Log_ floor area in square meter | 0.262 | 3.814 | |
Log_ Gross plot area in square meter | 0.292 | 3.427 | |
Log_ Age of the house in years | 0.392 | 2.548 | |
Log_ Number of rooms | 0.605 | 1.654 | |
Log_ Distance from property to the main road in meter | 0.555 | 1.800 | |
Dependent Variable: Log_ Residential Real Estate Price |
Model Summaryb | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|
Model | R | R Square | Adjusted R Square | Std. Error of the Estimate | Change Statistics | Durbin-Watson | ||||
R Square Change | F Change | df1 | df2 | Sig. F Change | ||||||
1 | .938a | .880 | .864 | .01557 | .880 | 55.175 | 12 | 90 | .000 | 1.835 |
Predicators: (Constant), Direction of the house (East=1 Non-East=0), Log_ Distance of the property from the main road in meter, External wall finishing material, Ceiling finishing material, Accessible road type, Log_ Number of Rooms, Land grade, Floor finishing material, Log_ Gross plot area in square meter, Log_ Age of the House in years, Broker involvement in the transaction process, Log_ Floor Area in square meter | ||||||||||
Dependent Variable: Log_ Residential Real Estate Price |
ANOVAa | ||||||
---|---|---|---|---|---|---|
Model | Sum of Squares | Df | Mean Square | F | Sig. | |
1 | Regression | .161 | 12 | .013 | 55.175 | .000b |
Residual | .022 | 90 | .000 | |||
Total | .182 | 102 | ||||
Dependent Variable: Log_ Residential Real Estate Price | ||||||
Predicators: (Constant), Direction of the house (East=1 Non-East=0), Log_ Distance of the property from the main road in meter, External wall finishing material, Ceiling finishing material, Accessible road type, Log_ Number of Rooms, Land grade, Floor finishing material, Log_ Gross plot area in square meter, Log_ Age of the house in years, Broker involvement in the transaction process, Log_ Floor Area in square meter |
Coefficientsa | ||||||
---|---|---|---|---|---|---|
Model | Unstandardized Coefficients | Standardized Coefficients | T | Sig. | ||
B | Std. Error | Beta | ||||
1 | ( Constant) | 14.539 | .450 | 32.320 | .000 | |
Broker involvement in the transaction process | .468 | .202 | .126 | 2.320 | .023* | |
External wall finishing material | .383 | .183 | .138 | 2.089 | .040* | |
Floor finishing material | .035 | .025 | .083 | 1.391 | .168 | |
Ceiling finishing material | .023 | .023 | .054 | 1.008 | .013* | |
Direction of the house (East=1 Non-East=0) | .456 | .160 | .150 | .285 | .036* | |
Land grade | -.009 | .011 | -.048 | -.865 | .389 | |
Accessible road type | -.001 | .008 | -.005 | -.094 | .925 | |
Log_ Floor Area in square meter | .601 | .175 | .307 | 3.441 | .001* | |
Log_ Gross plot size in square meter | .335 | .110 | .258 | 3.052 | .003* | |
Log_ Age of the House in years | -.187 | .054 | -.250 | -3.434 | .001* | |
Log_ Number of rooms | .148 | .066 | .131 | 2.240 | .028* | |
Log_ Distance of the property from the main road in meter | -.097 | .031 | -.191 | -3.115 | .002* | |
Dependent Variable: Log_ Residential Real Estate Price * Statistically significant at 0.05 |
S.N | Hypothesis | Sig (P-Value) | Level of Significance | Conclusion |
---|---|---|---|---|
1 | H1: There is significant relationship between age of the house and prices of residential real estate property | 0.001 | 0.05 | Accepted |
2 | H2: There is significant relationship between number of rooms and prices of residential real estate property | 0.028 | 0.05 | Accepted |
3 | H3: There is significant relationship between floor area and prices of residential real estate property | 0.001 | 0.05 | Accepted |
4 | H4: There is significant relationship between proximity to the main road and prices of residential real estate property | 0.002 | 0.05 | Accepted |
5 | H5: There is significant relationship between gross plot area and prices of residential real estate property | 0.003 | 0.05 | Accepted |
6 | H6: There is significant relationship between broker involvement in the transaction and prices of residential real estate property | 0.023 | 0.05 | Accepted |
7 | H7: There is significant relationship between external wall finishing materials and prices of residential real estate property | 0.040 | 0.05 | Accepted |
8 | H8: There is significant relationship between floor finishing materials and prices of residential real estate property | 0.168 | 0.05 | Reject |
9 | H9: There is significant relationship between ceiling finishing materials and prices of residential real estate property | 0.013 | 0.05 | Accepted |
10 | H10: There is significant relationship between direction of the house and prices of residential real estate property | 0.036 | 0.05 | Accepted |
11 | H11: There is significant relationship between land grade and prices of residential real estate property | 0.389 | 0.05 | Reject |
12 | H12: There is significant relationship between accessible road type and prices of residential real estate property | 0.925 | 0.05 | Reject |
ANOVA | Analysis of Variance |
ANRS | Amhara National Regional State |
CBD | Central Business District |
ETB | Ethiopian Birr |
LOG | Logarithm |
MoUDC | Minster of Urban Development and Construction |
OLS | Ordinary Least Square |
SPSS | Statistical Package Software for Social Science |
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APA Style
Mekuria, T. M., Yimam, S. H., Negashi, Y. T. (2024). Determinants of Residential Real Estate Property Prices in Ethiopia: The Case of Bahir Dar City. International Journal of Business and Economics Research, 13(3), 46-63. https://doi.org/10.11648/j.ijber.20241303.11
ACS Style
Mekuria, T. M.; Yimam, S. H.; Negashi, Y. T. Determinants of Residential Real Estate Property Prices in Ethiopia: The Case of Bahir Dar City. Int. J. Bus. Econ. Res. 2024, 13(3), 46-63. doi: 10.11648/j.ijber.20241303.11
AMA Style
Mekuria TM, Yimam SH, Negashi YT. Determinants of Residential Real Estate Property Prices in Ethiopia: The Case of Bahir Dar City. Int J Bus Econ Res. 2024;13(3):46-63. doi: 10.11648/j.ijber.20241303.11
@article{10.11648/j.ijber.20241303.11, author = {Tamirat Mekonnen Mekuria and Seid Hussen Yimam and Yohans Teshome Negashi}, title = {Determinants of Residential Real Estate Property Prices in Ethiopia: The Case of Bahir Dar City }, journal = {International Journal of Business and Economics Research}, volume = {13}, number = {3}, pages = {46-63}, doi = {10.11648/j.ijber.20241303.11}, url = {https://doi.org/10.11648/j.ijber.20241303.11}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ijber.20241303.11}, abstract = {The Ethiopian real estate industry has grown in the previous two decades, especially in the capital city of the country and regional capitals, including Bahir Dar. Real estate prices have doubled and even tripled in a few years because of different factors. Thus, the purpose of this study is to analyse the factors affecting residential real estate prices in Ethiopia, particularly in Bahir Dar City. For this purpose, the study used both purposive and stratified random sampling techniques. Descriptive and inferential statistics were used to analyze the data, and the ordinary least squares method was used to identify the factors that influence residential real estate prices. The hedonic regression model result reveals that R2 statistics (0.880) indicate that 88% of the variation in residential real estate prices can be explained by variation in the independent variables. Hedonic regression model results revealed that plot size, floor area, number of rooms, age of the house, external wall finishing material, ceiling finishing material, the direction of the house, distance of the property from the main road, and involvement of brokers in the transaction process, were major micro-factors that had a significant effect on residential real estate prices at the 5% level of significance. Furthermore, the interview results show that the challenges faced by real estate developers mostly include loans and aid issues, high-interest rates, mortgage restrictions, the financial capacity of real estate companies, delays in plan approvals, and rising costs of construction materials are among the major challenges affecting investment in real estate. The study suggests that the municipality of Bahir Dar City should provide an adequate supply of land to real estate developers, improve infrastructure development, and federal and regional governments should provide the credit lending mechanism by lowering interest rate especially for low-income class. }, year = {2024} }
TY - JOUR T1 - Determinants of Residential Real Estate Property Prices in Ethiopia: The Case of Bahir Dar City AU - Tamirat Mekonnen Mekuria AU - Seid Hussen Yimam AU - Yohans Teshome Negashi Y1 - 2024/05/24 PY - 2024 N1 - https://doi.org/10.11648/j.ijber.20241303.11 DO - 10.11648/j.ijber.20241303.11 T2 - International Journal of Business and Economics Research JF - International Journal of Business and Economics Research JO - International Journal of Business and Economics Research SP - 46 EP - 63 PB - Science Publishing Group SN - 2328-756X UR - https://doi.org/10.11648/j.ijber.20241303.11 AB - The Ethiopian real estate industry has grown in the previous two decades, especially in the capital city of the country and regional capitals, including Bahir Dar. Real estate prices have doubled and even tripled in a few years because of different factors. Thus, the purpose of this study is to analyse the factors affecting residential real estate prices in Ethiopia, particularly in Bahir Dar City. For this purpose, the study used both purposive and stratified random sampling techniques. Descriptive and inferential statistics were used to analyze the data, and the ordinary least squares method was used to identify the factors that influence residential real estate prices. The hedonic regression model result reveals that R2 statistics (0.880) indicate that 88% of the variation in residential real estate prices can be explained by variation in the independent variables. Hedonic regression model results revealed that plot size, floor area, number of rooms, age of the house, external wall finishing material, ceiling finishing material, the direction of the house, distance of the property from the main road, and involvement of brokers in the transaction process, were major micro-factors that had a significant effect on residential real estate prices at the 5% level of significance. Furthermore, the interview results show that the challenges faced by real estate developers mostly include loans and aid issues, high-interest rates, mortgage restrictions, the financial capacity of real estate companies, delays in plan approvals, and rising costs of construction materials are among the major challenges affecting investment in real estate. The study suggests that the municipality of Bahir Dar City should provide an adequate supply of land to real estate developers, improve infrastructure development, and federal and regional governments should provide the credit lending mechanism by lowering interest rate especially for low-income class. VL - 13 IS - 3 ER -