We analyze the impacts of alternative submarket definitions when predicting house prices in a mass appraisal context, using both ordinary least squares (OLS) and geostatistical techniques. For this purpose, we use over 13,000 housing transactions for Louisville, Kentucky. We use districts defined by the local property tax assessment office as well as a classification of census tracts generated by principal components and cluster analysis. We also experiment with varying numbers of census tract groupings. Our results indicate that somewhat better results are obtained with more homogeneous submarkets. Also, the accuracy of house price predictions increases as the number of submarkets is increased, but then quickly levels off. Adding submarket...
Traditionally, hedonic pricing studies focusing on commercial real estate control for spatial effect...
Location is capitalized into the price of the land the structure of a property is built on, and land...
This article presents a data-driven framework for housing market segmentation. Local marginal house ...
We analyze the impacts of alternative submarket definitions when predicting house prices in a mass a...
This paper compares alternative methods of controlling for the spatial dependence of house prices in...
This paper compares alternative methods of controlling for the spatial dependence of house prices in...
This paper compares the impacts of alternative models of spatial dependence on the accuracy of house...
This paper compares alternative methods for taking spatial dependence into account in house price pr...
This paper compares alternative methods for taking spatial dependence into account in house price pr...
This research evaluated forecasting accuracy of hedonic price models based on a number of different ...
This research evaluated forecasting accuracy of hedonic price models based on a number of different ...
An accurate prediction to the housing prices is very important to all the real estate market partici...
This article is motivated by the limited ability of standard hedonic price equations to deal with sp...
Location is capitalized into the price of the land the structure of a property is built on, and land...
Traditionally, hedonic pricing studies focusing on commercial real estate control for spatial effect...
Traditionally, hedonic pricing studies focusing on commercial real estate control for spatial effect...
Location is capitalized into the price of the land the structure of a property is built on, and land...
This article presents a data-driven framework for housing market segmentation. Local marginal house ...
We analyze the impacts of alternative submarket definitions when predicting house prices in a mass a...
This paper compares alternative methods of controlling for the spatial dependence of house prices in...
This paper compares alternative methods of controlling for the spatial dependence of house prices in...
This paper compares the impacts of alternative models of spatial dependence on the accuracy of house...
This paper compares alternative methods for taking spatial dependence into account in house price pr...
This paper compares alternative methods for taking spatial dependence into account in house price pr...
This research evaluated forecasting accuracy of hedonic price models based on a number of different ...
This research evaluated forecasting accuracy of hedonic price models based on a number of different ...
An accurate prediction to the housing prices is very important to all the real estate market partici...
This article is motivated by the limited ability of standard hedonic price equations to deal with sp...
Location is capitalized into the price of the land the structure of a property is built on, and land...
Traditionally, hedonic pricing studies focusing on commercial real estate control for spatial effect...
Traditionally, hedonic pricing studies focusing on commercial real estate control for spatial effect...
Location is capitalized into the price of the land the structure of a property is built on, and land...
This article presents a data-driven framework for housing market segmentation. Local marginal house ...