Repeat sales techniques are a common approach for modeling house prices. This methodology presumes the previous sale price acts as a proxy for hedonic variables, such as size and number of bedrooms. Capturing the spirit of the repeat sales setup, the proposed model includes the previous price as a predictor of current price. However, the model also includes an adjustment so that the more time which has elapsed between sales, the less useful the previous price becomes. To incorporate this property into the model framework, a two-part, nonlinear model is proposed which consists of a general price index and an autoregressive component (AR). The latter element can be thought of as the result of a latent AR(1) process for each house which is obs...
Spatial autoregressive hedonic models utilize house prices lagged in space and time to produce local...
This paper uses data on nearly a million homes sold in four metropolitan areas -- Atlanta, Chicago, ...
of Assessors, particularly James Stock, David Levy and Julie Miller, gave me important insights. Mat...
A statistical model for predicting individual house prices is proposed utilizing only information re...
The repeat sales model is commonly used to construct reliable house price indices in absence of indi...
We propose a new method to estimate a repeat-sales house price index. Our unbalanced panel method em...
Submission note: A thesis submitted in total fulfilment of the requirements for the degree of Doctor...
Repeat sales price estimators are designed to infer price indexes of infrequently sold and unstandar...
Several studies of housing price trends recommend combining statistical analysis to repeat sales of ...
This paper examines house price index methodology and explores what makes an index both practical an...
This study proposes an innovative methodology, named Repeat Appraised Price Model (RAV), useful for ...
We construct daily house price indexes for ten major U.S. metropolitan areas. Our calculations are b...
The widely used repeat sales method for constructing house price indexes only uses data for properti...
Do house price indices behave differently depending on their estimation methods? If so, to what exte...
Two common methods in real estate analysis are hedonic regression and repeat sales. While research h...
Spatial autoregressive hedonic models utilize house prices lagged in space and time to produce local...
This paper uses data on nearly a million homes sold in four metropolitan areas -- Atlanta, Chicago, ...
of Assessors, particularly James Stock, David Levy and Julie Miller, gave me important insights. Mat...
A statistical model for predicting individual house prices is proposed utilizing only information re...
The repeat sales model is commonly used to construct reliable house price indices in absence of indi...
We propose a new method to estimate a repeat-sales house price index. Our unbalanced panel method em...
Submission note: A thesis submitted in total fulfilment of the requirements for the degree of Doctor...
Repeat sales price estimators are designed to infer price indexes of infrequently sold and unstandar...
Several studies of housing price trends recommend combining statistical analysis to repeat sales of ...
This paper examines house price index methodology and explores what makes an index both practical an...
This study proposes an innovative methodology, named Repeat Appraised Price Model (RAV), useful for ...
We construct daily house price indexes for ten major U.S. metropolitan areas. Our calculations are b...
The widely used repeat sales method for constructing house price indexes only uses data for properti...
Do house price indices behave differently depending on their estimation methods? If so, to what exte...
Two common methods in real estate analysis are hedonic regression and repeat sales. While research h...
Spatial autoregressive hedonic models utilize house prices lagged in space and time to produce local...
This paper uses data on nearly a million homes sold in four metropolitan areas -- Atlanta, Chicago, ...
of Assessors, particularly James Stock, David Levy and Julie Miller, gave me important insights. Mat...