Title of article
Using genetic algorithms and linear regression analysis for private housing demand forecast
Author/Authors
S. Thomas Ng، نويسنده , , Martin Skitmore، نويسنده , , Keung Fai Wong، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
14
From page
1171
To page
1184
Abstract
An accurate prediction of prospective construction supply and demand, especially the private residential market, is paramount important to policy makers, as it could help formulate strategies to cultivate/stabilize the economy and satisfy the social needs (at macro level). Despite that, a realistic prediction of future private residential demand is never an easy task, as it is governed by a number of social and economic factors. In this paper, four leading indicator models are developed and compared for directly forecasting Hong Kong private sector residential demand. These comprise a (i) Linear Regression Analysis (LRA) model, (ii) Genetic Algorithms (GA) model, (iii) GA-LRA model, where LRA is used to select the indicator variables; and (iv) GA-LRA model with Adaptive Mutation Rate (AMR) to reduce the likelihood of local optima. The findings indicate that the GA-LRA model with AMR provides the most accurate forecasts and over a longer time horizon. In providing a range of possible forecasts, the model also provides an opportunity for the decision-maker to exercise judgment in selecting the most appropriate forecasts.
Keywords
Genetic algorithm , Forecasting , Housing , Demand , Supply , private sector , models
Journal title
Building and Environment
Serial Year
2008
Journal title
Building and Environment
Record number
409807
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