Predicting Housing Value: Genetic Algorithm Attribute Selection and Dependence Modelling Utilising the Gamma Test

Ian D. Wilson, Antonia J. Jones, Andrew Ware, David Jenkins

    Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

    7 Citations (Scopus)

    Abstract

    In this paper we show, by means of an example of its application to the problem of house price forecasting, an approach to attribute selection and dependence modelling utilising the Gamma Test (GT), a non-linear analysis algorithm that is described. The GT is employed in a two-stage process: first the GT drives a Genetic Algorithm (GA) to select a useful subset of features from a large dataset that we develop from eight economic statistical series of historical measures that may impact upon house price movement. Next we generate a predictive model utilising an Artificial Neural Network (ANN) trained to the Mean Squared Error (MSE) estimated by the GT, which accurately forecasts changes in the House Price Index (HPI). We present a background to the problem domain and demonstrate, based on results of this methodology, that the GT was of great utility in facilitating a GA based approach to extracting a sound predictive model from a large number of inputs in a data-point sparse real-world application.

    Original languageEnglish
    Title of host publicationApplications of Artificial Intelligence in Finance and Economics
    EditorsJane Binner, Graham Kendall, Shu-Heng Chen
    Pages243-275
    Number of pages33
    DOIs
    Publication statusPublished - 1 Dec 2004

    Publication series

    NameAdvances in Econometrics
    Volume19
    ISSN (Print)0731-9053

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