scholarly journals Exploring spatio-temporal hot spots of land price change with housing transaction data in Seoul

2019 ◽  
Vol 1 ◽  
pp. 1-2
Author(s):  
Seonga Cho ◽  
Gunhak Lee

<p><strong>Abstract.</strong> Evaluating residential property prices or land values is quite important for urban planning and government taxation as well. But it is generally difficult to predict land values accurately due to the dynamics of land prices, particularly in urban areas. Urban land values are mostly affected by natural environmental changes and various social and economic factors (Colwell &amp; Munneke, 1997). Also, such socio economic factors are influencing both temporal and spatial aspects of land value, and therefore spatio-temporal clusters of land price changes will show local variations of land values very well. Specifically, the spatio-temporal hot spots might indicate highly increasing demand of lands in the urban area. In those areas, regulation against real estate speculation must be needed from the public perspective because such areas might impact on other area land prices and ultimately national economic status. Therefore, analyzing spatio-temporal aspects of the land price is essential for efficient urban planning and policy making.</p><p> In this study, we attempt to detect spatio-temporal hot spots which are constantly increasing the value of residential property among real estate. Although there are many types of differently designated lands including such as commercial, agricultural, and lands for other usage, we focus on the residential lands to estimate land values in this research. The reason for this is because residential house price is substantially increasing and becoming one of sensitive issues of Seoul house market. Therefore, poor people or younger generation cannot afford such high housing expenses in Seoul. Also, house transaction data is much larger than other land usage data, and therefore it can be utilized for estimating land values more precisely. From 2011 to 2016, over 1.8 million housing transactions of lease and sale happened in Seoul. This big data on housing lease and sale transactions indicates the value of each location where the transaction occurred.</p><p> Specifically, we utilize spatial interpolation method including Kriging and differential local Moran’s I approach based on housing transaction data in Seoul. Housing transaction data includes every transaction for sales and leases of the house for the particular period. By applying these methodologies, we can visualize spatio-temporal clusters of highly increasing land prices and interpret significant clusters in terms of social factors. In fact, land price distribution has been widely discussed associated with smart growth and urban development (American Planning Association, 2002; Kaiser et al., 1995). However, most studies have focused on urban development and expansion, rather than the changes in the land price. Moreover, many studies have applied remote sensing approach to analyze urban land expansion (Xiao et al., 2006; Magigi &amp; Drescher, 2010). Notably, Hu et al., (2013) applied IDW to interpolate and estimating land prices with land samples. However, IDW has a shortcoming to interpolate the value which is distant from the sample points. In addition, even studies focusing on the land price have dealt with only one temporal period. From this research gap, we use the ordinary Kriging and differential local Moran’s I to detect and forecast local hot spots of land price changes.</p><p> This research has conducted the following steps. At the first step, several transactions for the residential area are consolidated into a single land value indicator. Suppose that the residential rent consists of three factors that are housing price (<i>P</i>), deposit (<i>D</i>), and monthly rent (<i>R</i>). Each factor can be transformed into the value index (<i>V</i>) by the transformation formula below. After calculating the land value index from the transformation, the global trend of the value index is overlaid on each period. Figure 1. Shows the mean value index increased from 2011 to 2016. Then, square cells regularly spaced by 100 meters are generated over study area to perform the ordinary Kriging. After the ordinary Kriging, the land value index is assigned to each grid cell. Finally, differential local Moran’s I index is calculated based on the difference that value index change between each year.</p><p> <i>V</i>&amp;thinsp;=&amp;thinsp;0.75&amp;thinsp;*&amp;thinsp;0.005&amp;thinsp;*&amp;thinsp;<i>P</i>&amp;thinsp;+&amp;thinsp;0.005&amp;thinsp;*&amp;thinsp;<i>D</i>&amp;thinsp;+&amp;thinsp;<i>R</i></p><p> As a result, the global trend of land value changes from 2011 to 2016 in Seoul is shown in Figure. 1. The mean value index is increasing constantly. The spatio-temporal hot spots of land price change are found where the value index increment exceeds the average value index increasing over Seoul. As a result, seven clusters are detected (Figure. 2).</p>

2018 ◽  
Vol 31 (1) ◽  
pp. 244-267 ◽  
Author(s):  
Y. Xiong ◽  
D. Bingham ◽  
W. J. Braun ◽  
X. J. Hu

2018 ◽  
Vol 16 ◽  
Author(s):  
Anita Ratnasari Rakhmatulloh ◽  
Imam Buchori ◽  
Wisnu Pradoto ◽  
Bambang Riyanto

Urban land demand tends to keep increasing as a result of economic and population growths. The high intensity of activity will bring changes to land value. The corridors of Semarang - Ungaran and Semarang - Mranggen have significant differences in land values despite being at relatively the same distance to city centre. Similarly, the rate of land price change in these two corridors are also different. The study aims to examine and prove the effect of distance to city centre toward land price in downtown areas by employing statistical correlation analysis and accessibility calculation. The result reveals that distance to city centre has no longer effect land prices. It was found that the farther from the city centre the land prices decreases gradually but increases at road nodes that connect to the trip generation points such as toll road gate, residential area and commercial area or shopping centre.


The pandemics of influenza in Nonthaburi province was investigated by using autoregression and found the influenza spread pattern by autocorrelation (Moran's I). Population density, temperature, relative humidity, and rainfall are the factors used in the analysis. The influenza quantitative cross-section retrospective research design was employed from 2003-2010. Three seasons are classified as: hot, rainy, and winter season. The study found that influenza outbreaks in the rainy season was R2=0.45 and population density apparently affected the spread of influenza incidence with statistical significance coefficient (p-value <0.05). From the distribution pattern, the highest Moran's I values were related with the highest population density in 4 sub-districts: Suenyai, Taladkhwun, Bangkhen, and Bangkruay sub-district.


2019 ◽  
Vol 104 ◽  
pp. 116-123 ◽  
Author(s):  
Gevorg Tepanosyan ◽  
Lilit Sahakyan ◽  
Chaosheng Zhang ◽  
Armen Saghatelyan

Land ◽  
2021 ◽  
Vol 10 (4) ◽  
pp. 336
Author(s):  
Roland Füss ◽  
Jan A. Koller ◽  
Alois Weigand

The value of land is determined by the locations’ attractiveness and the degree of direct land use regulation. When regulations are binding, e.g., when a restriction on the maximum floor area ratio exists, the land price can be directly expressed as a function of the maximum floor area ratio and local amenities. We show theoretically and empirically how this approach can be used to determine land values from rental prices of residential structures built upon that land. From our empirical results, we derive two main sources for a monocentric structure of land prices. First, the location attractiveness of centrally located dwellings makes land prices more expensive. Second, as the maximum floor area ratio is high in central areas, the regulation works as a multiplier for land prices and inflates prices accordingly. Our model gives insights into the determinants of urban land prices and provides a useful approach for land appraisal in regions where land transactions are scarce.


2021 ◽  
Vol 14 (4) ◽  
pp. 155-167 ◽  
Author(s):  
Parichat Wetchayont ◽  
Katawut Waiyasusri

Spatial distribution and spreading patterns of COVID-19 in Thailand were investigated in this study for the 1 April – 23 July 2021 period by analyzing COVID-19 incidence’s spatial autocorrelation and clustering patterns in connection to population density, adult population, mean income, hospital beds, doctors and nurses. Clustering analysis indicated that Bangkok is a significant hotspot for incidence rates, whereas other cities across the region have been less affected. Bivariate Moran’s I showed a low relationship between COVID-19 incidences and the number of adults (Moran’s I = 0.1023- 0.1985), whereas a strong positive relationship was found between COVID-19 incidences and population density (Moran’s I = 0.2776-0.6022). Moreover, the difference Moran’s I value in each parameter demonstrated the transmission level of infectious COVID-19, particularly in the Early (first phase) and Spreading stages (second and third phases). Spatial association in the early stage of the COVID-19 outbreak in Thailand was measured in this study, which is described as a spatio-temporal pattern. The results showed that all of the models indicate a significant positive spatial association of COVID-19 infections from around 10 April 2021. To avoid an exponential spread over Thailand, it was important to detect the spatial spread in the early stages. Finally, these findings could be used to create monitoring tools and policy prevention planning in future.


2017 ◽  
Vol 33 (19) ◽  
pp. 3072-3079 ◽  
Author(s):  
Christoph Schmal ◽  
Jihwan Myung ◽  
Hanspeter Herzel ◽  
Grigory Bordyugov

2021 ◽  
Vol 19 (1) ◽  
pp. 10-20
Author(s):  
Westi Utami ◽  
Yuli Ardianto Wibowo ◽  
Fajar Buyung Permadi

Semarang City as one of the areas on the north coast has a serious problem related to tidal flooding. The impact of this disaster has implications for changes in land use, a decrease in environmental quality and health, the emergence of slum settlements, a decrease in income and also a decrease in land value. This study aims to map the impact of tidal flooding on changes in land values based on the Land Value Zone Map (ZNT) and map land prices based on spatial data analysis. The study was carried out through spatial analysis by overlaying (join intersection) the 2014, 2016, 2018 and 2019 ZNT maps to determine changes in land value, while mapping land prices, especially in Mangunharjo Village, was based on land use maps, positive accessibility (road network) and negative accessibility (prone flood rob). The results of the study show that land which is permanently affected by tidal flooding and cannot be used anymore makes it a lost / destroyed land, while periodically inundated land has experienced a price decline in the range of Rp 100.000 – 200.000, -/m2. Meanwhile, the results of the study from the ZNT map for 2014 to 2019 show a very significant difference in price between zone 1 and a price increase of ± Rp 3.500.000; zone 2 price increase ± Rp 575.000, -, zone 3 at a price range of Rp 385.000, and zone 4 as the tidal flood prone zone only experienced an increase of Rp 250.000,-. In this context, the variable of tidal flooding vulnerability greatly affects the stagnation of land prices and even decreases in land prices, while the positive accessibility variable is the location of land on national and local roads that has experienced a very high price increase.


2018 ◽  
Vol 16 (5) ◽  
Author(s):  
Anita Ratnasari Rakhmatulloh ◽  
Imam Buchori ◽  
Wisnu Pradoto ◽  
Bambang Riyanto

Urban land demand tends to keep increasing as a result of economic and population growths. The high intensity of activity will bring changes to land value. The corridors of Semarang - Ungaran and Semarang - Mranggen have significant differences in land values despite being at relatively the same distance to city centre. Similarly, the rate of land price change in these two corridors are also different. The study aims to examine and prove the effect of distance to city centre toward land price in downtown areas by employing statistical correlation analysis and accessibility calculation. The result reveals that distance to city centre has no longer effect land prices. It was found that the farther from the city centre the land prices decreases gradually but increases at road nodes that connect to the trip generation points such as toll road gate, residential area and commercial area or shopping centre.


Sign in / Sign up

Export Citation Format

Share Document