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Forecasting low cost housing demand in urban area in Malaysia using Artificial Neural Networks (ANN)

Zainun, Noor Yasmin and Mohd Arish, Nur Aini and Suratkon, Azeanita (2012) Forecasting low cost housing demand in urban area in Malaysia using Artificial Neural Networks (ANN). Other thesis, Universiti Tun Hussein Onn Malaysia.


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The forecasted proportions of urban population to total population in Malaysia are steadily increasing from 26% in 1965 to 70% in 2020. Therefore, there is a need to fully appreciate the legacy of the urbanization of Malaysia by providing affordable housing. The main aim of this study is to focus on developing a model to forecast the demand of low cost housing in urban areas. The study is focused on eight states in Peninsular Malaysia, as most of these states are among the areas predicted to have achieved the highest urbanization level in the country. The states are Kedah, Penang, Perlis, Kelantan, Terengganu, Perak, Pahang and Johor. Monthly time-series data for six to eight years of nine indicators including: population growth, birth rate; child mortality rate; unemployment rate; household income rate; inflation rate; GDP; poverty rate and housing stocks have been used to forecast the demand on low cost housing using Artificial Neural Network (ANN) approach. The data is collected from the Department of Malaysian Statistics, the Ministry of Housing and the Housing Department of the State Secretary. The Principal Component Analysis (PCA) method has been adopted to analyze the data using SPSS 18.0 package. The performance of the Neural Network is evaluated using R squared (R~a)n d the accuracy of the model is measured using the Mean Absolute Percentage Error (MAPE). Lastly, a user friendly interface is developed using Visual Basic. From the results, it was found that the best Neural Network to forecast the demand on low cost housing in Kedah is 2-16-1, Pahang 2-15-1, Kelantan 2-25-1, Terengganu 2-30-1, Perlis 3-5-1, Pulau Pinang 3-7-1, Johor 3-38-1 and Perak 3- 24-1. In conclusion, the evaluation performance of the model through the MAPE value shows that the NN model can forecast the low-cost housing demand 'very good' in Pulau Pinang, Johor, Pahang and Kelantan, where else 'good' in Kedah and Terengganu while in Perlis and Perak it is 'not accurate' due to the lack of data. The study has successfully developed a user friendly interface to retrieve and view all the data easily.

Item Type: Thesis (Other)
Uncontrolled Keywords: low-cost housing demand; rincipal component analysis; artificial neural networks
Subjects: H Social Sciences > HD Industries. Land use. Labor > HD72-88 Economic development. Development economics. Economic growth
Divisions: Faculty of Civil and Environmental Engineering > Department of Construction Engineering and Architecture
Depositing User: Normajihan Abd. Rahman
Date Deposited: 21 Dec 2012 07:24
Last Modified: 21 Dec 2012 07:24
URI: http://eprints.uthm.edu.my/id/eprint/2870
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