Predicting residential demand: applying random forest to predict housing demand in Cape Town
The literature shows that Random Forest is a suitable technique to predict a target variable for a household with completely unseen characteristics. The models produced in this paper show that the characteristics of a household can be used to predict the Type of Dwelling, the Tenure and the Number o...
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Online Access: | http://hdl.handle.net/11427/29602 |
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ndltd-netd.ac.za-oai-union.ndltd.org-uct-oai-localhost-11427-296022020-12-10T05:11:07Z Predicting residential demand: applying random forest to predict housing demand in Cape Town Dyer, Ross McGaffin, Robert Nyirenda, Juwa Chiza Property Studies The literature shows that Random Forest is a suitable technique to predict a target variable for a household with completely unseen characteristics. The models produced in this paper show that the characteristics of a household can be used to predict the Type of Dwelling, the Tenure and the Number of Bedrooms to varying degrees of accuracy. While none of the sets of models produced indicate a high degree of predictive accuracy relative to hurdle rates, the paper does demonstrate the value that the Random Forest technique offers in moving closer to an understanding of the complex nature of housing demand. A key finding is that the Census variables available for the models are not discriminatory enough to enable the high degree of accuracy expected from a predictive model. 2019-02-18T10:34:03Z 2019-02-18T10:34:03Z 2018 2019-02-18T08:40:56Z Master Thesis Masters MSc http://hdl.handle.net/11427/29602 eng application/pdf University of Cape Town Faculty of Engineering and the Built Environment Department of Construction Economics and Management |
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NDLTD |
language |
English |
format |
Dissertation |
sources |
NDLTD |
topic |
Property Studies |
spellingShingle |
Property Studies Dyer, Ross Predicting residential demand: applying random forest to predict housing demand in Cape Town |
description |
The literature shows that Random Forest is a suitable technique to predict a target variable for a household with completely unseen characteristics. The models produced in this paper show that the characteristics of a household can be used to predict the Type of Dwelling, the Tenure and the Number of Bedrooms to varying degrees of accuracy. While none of the sets of models produced indicate a high degree of predictive accuracy relative to hurdle rates, the paper does demonstrate the value that the Random Forest technique offers in moving closer to an understanding of the complex nature of housing demand. A key finding is that the Census variables available for the models are not discriminatory enough to enable the high degree of accuracy expected from a predictive model. |
author2 |
McGaffin, Robert |
author_facet |
McGaffin, Robert Dyer, Ross |
author |
Dyer, Ross |
author_sort |
Dyer, Ross |
title |
Predicting residential demand: applying random forest to predict housing demand in Cape Town |
title_short |
Predicting residential demand: applying random forest to predict housing demand in Cape Town |
title_full |
Predicting residential demand: applying random forest to predict housing demand in Cape Town |
title_fullStr |
Predicting residential demand: applying random forest to predict housing demand in Cape Town |
title_full_unstemmed |
Predicting residential demand: applying random forest to predict housing demand in Cape Town |
title_sort |
predicting residential demand: applying random forest to predict housing demand in cape town |
publisher |
University of Cape Town |
publishDate |
2019 |
url |
http://hdl.handle.net/11427/29602 |
work_keys_str_mv |
AT dyerross predictingresidentialdemandapplyingrandomforesttopredicthousingdemandincapetown |
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1719369300821671936 |