RESEARCH JOURNAL OF PURE SCIENCE AND TECHNOLOGY (RJPST )
E-ISSN 2579-0536
P-ISSN 2695-2696
VOL. 6 NO. 3 2023
DOI: 10.56201/rjpst.v6.no3.2023.pg204.225
Amos Olaolu ADEWUSI and Oluwakemi Faith GBADEBO
Property valuation is a core aspect of estate surveying and valuation practices, providing crucial estimates for real estate stakeholders including developers, institutional lenders, insurance companies among others. Traditional valuation methods often fall short in accurately estimating property values, leading advanced economies to promote the use of Artificial Intelligence Technologies (AIT). While significant research has been conducted on the awareness and adoption of AIT in developed countries, there is limited research on this topic in developing countries. This study aims to assess the level of awareness of AIT among professionals involved in property valuation in Lagos, Nigeria. Data for the study were collected from estate firms across Lagos metropolis and analyzed using descriptive statistics and Chi-square tests. Sixteen types of AI technologies were identified, and six training algorithms were evaluated. The results reveal a general lack of awareness of AIT among estate valuers practicing in Lagos metropolis. Specifically, for CatBoost, XGBoost, LGBM, and Random Forest, there is no significant relationship between years of professional qualification or educational qualification and awareness levels of AIT, as indicated by Pearson Chi-Square tests with p-values > 0.05. In addition, symmetric measures (Phi and Cramer's V values) indicate weak to very weak associations between years of professional experience, educational qualifications, and awareness levels of the selected AI technologies. This highlights a significant gap in the training of valuers in the study area. The findings offer valuable insights for property professionals, real estate investors, and policymakers, suggesting a need for enhanced training and awareness programs to bridge this gap.
Artificial Intelligence (AI), Property value, Property valuation
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