A Multilevel Model Approach for Assessing the Effects of House and Neighborhood Characteristics on Housing Vacancy: A Case of Daegu, South Korea
Abstract
:1. Introduction
2. Causes of Housing Vacancy
3. Data and Methods
3.1. Study Area
3.2. Housing Vacancy Database
3.3. Methods
4. Results and Discussion
4.1. Spatial Clustering Pattern of Vacant Housing
4.2. Factors Affecting Housing Vacancy
5. Conclusions
Funding
Conflicts of Interest
References
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Variable | Mean/Freq. *,** | SD/Percent ** | Data Source | ||
---|---|---|---|---|---|
Dependent Variable | Vacancy | Non-vacant housing | 141,580 | 98.69 | Vacant Building Database, City of Daegu GIS Integrated Building Database, NSIP |
Vacant housing | 1880 | 1.31 | |||
Independent Variable | House level (Level 1) | ||||
Floor area | 94.78 | 42.45 | GIS Integrated Building Database, NSIP Building Register, Building Administration System | ||
Number of floors | 1.99 | 0.94 | |||
Housing age | 31.86 | 17.18 | |||
Structure | Reinforced concrete | 22,528 | 15.70 | ||
Block, wood, and stone | 120,932 | 84.3 | |||
Slope | Flat land | 121,596 | 84.76 | ||
Gentle slope (≤15°) | 21,494 | 14.98 | |||
Steep slope (>15°) | 256 | 0.18 | |||
Lowland or highland | 114 | 0.08 | |||
Lot shape | Regular | 130,268 | 90.8 | ||
Irregular | 13,192 | 9.2 | |||
Street | Regular | 105,325 | 73.42 | ||
Narrow and closed | 38,135 | 26.58 | |||
Land price (natural logarithm) | 13.29 | 0.47 | |||
Redevelopment zone | Outside | 134,407 | 93.69 | Urban redevelopment zone, NSIP | |
Within | 9053 | 6.31 | |||
Neighboring vacant housing | 16.48 | 22.47 | GIS analysis by this study | ||
Neighborhood level (Level 2) | |||||
Population change (2010–2015) | 3.53 | 24.39 | 2015 Population and Housing Census, Statistics Korea | ||
Elderly-child ratio (2015) *** | 159.53 | 85.28 | |||
Percent of foreign households (2015) | 0.95 | 1.24 | |||
Percent of national basic livelihood security recipients (2015) | 5.99 | 7.72 | City of Daegu | ||
Employment growth in all industries (2010–2015) | 17.34 | 35.34 | National Establishment Survey, Statistics Korea | ||
Employment growth in manufacturing (2010–2015) | −0.002 | 0.029 | |||
Proportion of old housing (≥30 years) | 45.05 | 17.98 | Building Register, Building Administration System | ||
Proportion of new housing (<5 years) | 1.57 | 1.56 | |||
LN (Redevelopment zone area) | 4.19 | 5.34 | Urban redevelopment zone, NSIP |
Model | ICC | AIC | BIC |
---|---|---|---|
Model 1: Unconditional model | 0.345 | 18,340.07 | 18,359.81 |
Model 2: House-level variables only | 0.115 | 16,111.93 | 16,250.17 |
Model 3: Both house- and neighborhood-level variables | 0.101 | 16,111.84 | 16,341.93 |
Coef. | t | ||
---|---|---|---|
House level (Level 1) | |||
Floor area | −0.0132 *** | (−13.8422) | |
Number of floors | −1.0979 *** | (−18.0910) | |
Housing age | 0.0105 *** | (7.5937) | |
Structure | Reinforced concrete | (ref.) | |
Block, wood, and stone | −0.3137 * | (−1.6537) | |
Slope | Flat land | (ref.) | |
Gentle slope | 0.2142 *** | (3.1662) | |
Steep slope | −0.4994 | (−0.6871) | |
Lowland or highland | 0.9370 *** | (2.6290) | |
Lot shape | Regular | (ref.) | |
Irregular | 0.1707 ** | (2.5054) | |
Street | Regular | (ref.) | |
Narrow and closed | 0.4854 *** | (8.2020) | |
LN (Land price) | 0.1733 * | (1.9021) | |
Redevelopment zone | Outside | (ref.) | |
Within | 0.3653 *** | (4.8492) | |
Neighboring vacant housing | 0.0196 *** | (13.3895) | |
Neighborhood level (Level 2) | |||
Population change | −0.0111 *** | (−2.7243) | |
Elderly-child ratio | −0.0017 | (−1.3885) | |
Percent of foreign households | 0.0046 | (0.3400) | |
Percent of national basic livelihood security recipients | 0.0813 | (1.3762) | |
Employment growth in all industries | 0.0016 | (0.9651) | |
Employment growth in manufacturing | 2.3525 | (0.8923) | |
Proportion of old housing | 0.0081 * | (1.6659) | |
Proportion of new housing | 0.0506 | (1.1880) | |
LN (Redevelopment zone area) | 0.0155 | (1.2038) | |
Cons | −5.9825 *** | (−4.7965) | |
Model Summary | |||
Number of observations | 143,460 | ||
Number of groups | 139 | ||
ICC | 0.100759 | ||
AIC | 16,111.84 | ||
BIC | 16,341.93 |
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Park, J.-I. A Multilevel Model Approach for Assessing the Effects of House and Neighborhood Characteristics on Housing Vacancy: A Case of Daegu, South Korea. Sustainability 2019, 11, 2515. https://doi.org/10.3390/su11092515
Park J-I. A Multilevel Model Approach for Assessing the Effects of House and Neighborhood Characteristics on Housing Vacancy: A Case of Daegu, South Korea. Sustainability. 2019; 11(9):2515. https://doi.org/10.3390/su11092515
Chicago/Turabian StylePark, Jeong-Il. 2019. "A Multilevel Model Approach for Assessing the Effects of House and Neighborhood Characteristics on Housing Vacancy: A Case of Daegu, South Korea" Sustainability 11, no. 9: 2515. https://doi.org/10.3390/su11092515
APA StylePark, J. -I. (2019). A Multilevel Model Approach for Assessing the Effects of House and Neighborhood Characteristics on Housing Vacancy: A Case of Daegu, South Korea. Sustainability, 11(9), 2515. https://doi.org/10.3390/su11092515