An integrated framework for affordable housing demand projection and site selection

Highly priced properties cause affordability problems among low and middle-income buyers. To overcome this, the Malaysian government introduces affordable housing through National Urbanisation Policy, National Physical Plan, National Housing Policy, and Eleventh Malaysia Plan. Whilst having good mar...

Full description

Saved in:
Bibliographic Details
Main Authors: Nurul Hana Adi Maimun, Suriatini Ismail, Junainah Mohamad, M. N. Razali, M. Z. Tarmidi, N. H. Idris
Format: Indexed Article
Language:English
Published: IOP Publishing 2018
Online Access:http://discol.umk.edu.my/id/eprint/7388/1/Adi_Maimun_2018_IOP_Conf._Ser.__Earth_Environ._Sci._169_012094.pdf
http://discol.umk.edu.my/id/eprint/7388/
https://iopscience.iop.org/article/10.1088/1755-1315/169/1/012094
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.umk.eprints.7388
record_format eprints
spelling my.umk.eprints.73882022-05-23T15:35:33Z http://discol.umk.edu.my/id/eprint/7388/ An integrated framework for affordable housing demand projection and site selection Nurul Hana Adi Maimun Suriatini Ismail Junainah Mohamad M. N. Razali M. Z. Tarmidi N. H. Idris Highly priced properties cause affordability problems among low and middle-income buyers. To overcome this, the Malaysian government introduces affordable housing through National Urbanisation Policy, National Physical Plan, National Housing Policy, and Eleventh Malaysia Plan. Whilst having good market response, some areas experience either shortage or surplus of houses reflecting ineffective affordable housing policies. Inappropriate estimation technique and aggregate location estimations limit the accuracy and usability of demand estimations. Thus, this research aims to establish a framework to estimate local demands for affordable housing. This study selects and reviews the theoretical and modelling framework of Artificial Neural Network Model (ANN) due to its superior performance in forecasting demand. The ANN theoretical and modelling framework guides the modelling process, which includes data collection and preparation, model development, data analysis and model evaluation. Potential sites for affordable housing development identified from the model's coefficients are visualised spatially through Geographic Information System (GIS). Localised housing demand forecasts are highly beneficial for policy-makers and housing developers to allocate the number of supplies across locations. This allows maximum take-up rate for affordable housing, avoids supply and demand mismatch and thus achieving the national housing policy agenda. IOP Publishing 2018 Indexed Article NonPeerReviewed text en http://discol.umk.edu.my/id/eprint/7388/1/Adi_Maimun_2018_IOP_Conf._Ser.__Earth_Environ._Sci._169_012094.pdf Nurul Hana Adi Maimun and Suriatini Ismail and Junainah Mohamad and M. N. Razali and M. Z. Tarmidi and N. H. Idris (2018) An integrated framework for affordable housing demand projection and site selection. IOP Conference Series: Earth and Environmental Science, 169. pp. 2-9. ISSN 17551307 https://iopscience.iop.org/article/10.1088/1755-1315/169/1/012094
institution Universiti Malaysia Kelantan
building Perpustakaan Universiti Malaysia Kelantan
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Kelantan
content_source UMK Institutional Repository
url_provider http://umkeprints.umk.edu.my/
language English
description Highly priced properties cause affordability problems among low and middle-income buyers. To overcome this, the Malaysian government introduces affordable housing through National Urbanisation Policy, National Physical Plan, National Housing Policy, and Eleventh Malaysia Plan. Whilst having good market response, some areas experience either shortage or surplus of houses reflecting ineffective affordable housing policies. Inappropriate estimation technique and aggregate location estimations limit the accuracy and usability of demand estimations. Thus, this research aims to establish a framework to estimate local demands for affordable housing. This study selects and reviews the theoretical and modelling framework of Artificial Neural Network Model (ANN) due to its superior performance in forecasting demand. The ANN theoretical and modelling framework guides the modelling process, which includes data collection and preparation, model development, data analysis and model evaluation. Potential sites for affordable housing development identified from the model's coefficients are visualised spatially through Geographic Information System (GIS). Localised housing demand forecasts are highly beneficial for policy-makers and housing developers to allocate the number of supplies across locations. This allows maximum take-up rate for affordable housing, avoids supply and demand mismatch and thus achieving the national housing policy agenda.
format Indexed Article
author Nurul Hana Adi Maimun
Suriatini Ismail
Junainah Mohamad
M. N. Razali
M. Z. Tarmidi
N. H. Idris
spellingShingle Nurul Hana Adi Maimun
Suriatini Ismail
Junainah Mohamad
M. N. Razali
M. Z. Tarmidi
N. H. Idris
An integrated framework for affordable housing demand projection and site selection
author_facet Nurul Hana Adi Maimun
Suriatini Ismail
Junainah Mohamad
M. N. Razali
M. Z. Tarmidi
N. H. Idris
author_sort Nurul Hana Adi Maimun
title An integrated framework for affordable housing demand projection and site selection
title_short An integrated framework for affordable housing demand projection and site selection
title_full An integrated framework for affordable housing demand projection and site selection
title_fullStr An integrated framework for affordable housing demand projection and site selection
title_full_unstemmed An integrated framework for affordable housing demand projection and site selection
title_sort integrated framework for affordable housing demand projection and site selection
publisher IOP Publishing
publishDate 2018
url http://discol.umk.edu.my/id/eprint/7388/1/Adi_Maimun_2018_IOP_Conf._Ser.__Earth_Environ._Sci._169_012094.pdf
http://discol.umk.edu.my/id/eprint/7388/
https://iopscience.iop.org/article/10.1088/1755-1315/169/1/012094
_version_ 1763303834425229312
score 13.214268