What is it about?
The housing sector is one of the main sources of economic growth in both developing and developed countries. Although many methods for modeling house prices have been proposed, each has its own limitations. The present paper aims to propose gene expression programming (GEP) as a new approach for prediction of housing price.
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Why is it important?
The housing price model based on the gene expression programming is compared with a least square regression model that is derived from a stepwise process. The results indicate that the GEPābased model provides superior performance to the traditional regression.
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This page is a summary of: Predicting house price via gene expression programming, International Journal of Housing Markets and Analysis, July 2013, Emerald,
DOI: 10.1108/ijhma-08-2012-0039.
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