The main purpose of this paper is to use regression models to explore the factors affecting housing prices as well as apply spatial aggregation to explore the changes of urban space prices. This study collected data in Taitung City from the year 2013 to 2017, including 3533 real estate transaction price records. The hedonic price method, spatial lag model and spatial error model were used to conduct global spatial self-correlation tests to explore the performance of house price variables and space price aggregation. We compare the three models by R² and Akaike Information Criterion (AIC) to determine the spatial self-correlation ability performance, and explore the spatial distribution of prices and the changes of price regions from th...
In big cities of developing countries with fast changes, land price always acts as a key role in lan...
Land price plays an important role in guiding land resource allocation for urban planning and develo...
This article aims at testing the possibilities of applying hierarchical spatial autoregressive model...
Spatial autocorrelation is commonly found in the Hedonic Pricing model for real estate prices, but l...
Spatial autocorrelation is a phenomenon where the values of a variable located within certain geogra...
Real estate economists and practitioners have been cognizant of spatial autocorrelation in housing p...
In the past decades, the booming growth of housing markets in China triggers the urgent need to expl...
The need to consider spatial autocorrelation in hedonic price modelling is paramount since reliabili...
Within housing literature, the presence of spatial autocorrelation (S.A.) in housing prices is typic...
Spatial autocorrelation is commonly found in the Hedonic Pricing model for real estate prices, but ...
AbstractBased on spatial econometric model, the article selects the panel data of eight cities aroun...
Researchers deal with spatial dependence in urban transaction data due to econometrical reasons – to...
Summary. Urban planners frequently use regression analysis for the empirical estimation of land pric...
This journal issue is the Special issue: Asia-Pacific Real Estate Research Symposium 2010Spatial dep...
By splitting the spatial effects into building and neighborhood effects, this paper develops a two o...
In big cities of developing countries with fast changes, land price always acts as a key role in lan...
Land price plays an important role in guiding land resource allocation for urban planning and develo...
This article aims at testing the possibilities of applying hierarchical spatial autoregressive model...
Spatial autocorrelation is commonly found in the Hedonic Pricing model for real estate prices, but l...
Spatial autocorrelation is a phenomenon where the values of a variable located within certain geogra...
Real estate economists and practitioners have been cognizant of spatial autocorrelation in housing p...
In the past decades, the booming growth of housing markets in China triggers the urgent need to expl...
The need to consider spatial autocorrelation in hedonic price modelling is paramount since reliabili...
Within housing literature, the presence of spatial autocorrelation (S.A.) in housing prices is typic...
Spatial autocorrelation is commonly found in the Hedonic Pricing model for real estate prices, but ...
AbstractBased on spatial econometric model, the article selects the panel data of eight cities aroun...
Researchers deal with spatial dependence in urban transaction data due to econometrical reasons – to...
Summary. Urban planners frequently use regression analysis for the empirical estimation of land pric...
This journal issue is the Special issue: Asia-Pacific Real Estate Research Symposium 2010Spatial dep...
By splitting the spatial effects into building and neighborhood effects, this paper develops a two o...
In big cities of developing countries with fast changes, land price always acts as a key role in lan...
Land price plays an important role in guiding land resource allocation for urban planning and develo...
This article aims at testing the possibilities of applying hierarchical spatial autoregressive model...