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Hedonic price models and indices based on boosting applied to the Dutch housing market

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TLDR
In this article, a hedonic price model for six geographical submarkets in the Netherlands is presented, based on a recent data-mining technique called boosting, which enables capturing complex nonlinear relationships and interaction effects between input variables.
Abstract
We create a hedonic price model for house prices for six geographical submarkets in the Netherlands. Our model is based on a recent data-mining technique called boosting. Boosting is an ensemble technique that combines multiple models, in our case decision trees, into a combined prediction. Boosting enables capturing of complex nonlinear relationships and interaction effects between input variables. We report mean relative errors and mean absolute error for all regions and compare our models with a standard linear regression approach. Our model improves prediction performance by up to 39% compared with linear regression and by up to 20% compared with a log-linear regression model. Next, we interpret the boosted models: we determine the most influential characteristics and graphically depict the relationship between the most important input variables and the house price. We find the size of the house to be the most important input for all but one region, and find some interesting nonlinear relationships between inputs and price. Finally, we construct hedonic price indices and compare these with the mean and median index and find that these indices differ notably in the urban regions of Amsterdam and Rotterdam. Copyright © 2008 John Wiley & Sons, Ltd.

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Journal ArticleDOI

Hedonic price indexes for residential housing: a survey, evaluation and taxonomy

TL;DR: In this paper, the main criticisms of the hedonic approach are evaluated and compared with those of the repeat-sales and stratified median methods, and the overall conclusion is that the advantages of this approach outweigh its disadvantages, and that greater use needs to be made of spatial econometric and nonparametric methods to exploit the increased availability of geospatial data.
Journal ArticleDOI

Estimation of hedonic price functions via additive nonparametric regression

TL;DR: In this paper, the authors model a hedonic price function for housing as an additive nonparametric regression, which is done via a backfitting procedure in combination with a local polynomial estimator.
Report SeriesDOI

Hedonic Price Indexes for Housing

TL;DR: In this article, the main criticisms of the hedonic approach are evaluated and compared with the repeat sales and stratified median methods, and the overall conclusion is that the advantages of the approach outweigh its disadvantages, and also discussed some promising areas for future research in the Hedonic field, particularly the use of geospatial data and nonparametric methods for better capturing the impact of location on house prices.
Journal ArticleDOI

Hotel location evaluation: A combination of machine learning tools and web GIS

TL;DR: A new approach to evaluate potential sites for proposed hotel properties by designing an automated web GIS application: Hotel Location Selection and Analyzing Toolset (HoLSAT), which uses a set of machine learning algorithms to predict various business success indicators associated with location sites.
Journal ArticleDOI

Estimation and updating methods for hedonic valuation

TL;DR: In this article, the authors investigate the accuracy and volatility of different methods for estimating and updating hedonic valuation models, and compare a range of linear and machine learning techniques in the context of moving or extending window scenarios that are used in practice but have not been considered in prior research.
References
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Leo Breiman
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Leo Breiman
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Journal ArticleDOI

Hedonic Prices and Implicit Markets: Product Differentiation in Pure Competition

TL;DR: In this article, a theory of hedonic prices is formulated as a problem in the economics of spatial equilibrium in which the entire set of implicit prices guides both consumer and producer locational decisions in characteristics space.
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