Factors Influencing Stakeholders’ Decision to Invest in Residential Properties: A Perceptual Analysis of Flood-Risk Areas
Abstract
:1. Introduction
2. Determinants of Investment in Flood-Risk Areas
3. Materials and Methods
3.1. Research Questions
- (i)
- What factors do property investors consider in making residential housing decisions in flood-risk areas?
- (ii)
- How well do the estate agents understand the requirements of property investors when making residential housing decisions?
- (iii)
- Compare and rank the perceptual analysis of the responses obtained in (i) and (ii).
- (iv)
- What inferences can be drawn from their perceptual analysis?
3.2. Research Process
3.3. Study Area
3.4. Data Collection
3.5. Survey Procedure
Category | Factors | Code |
---|---|---|
Locational | The property’s actual location | F1 |
The possibility that the actual place the property is located will be flooded | F2 | |
The distance to the workplace | F3 | |
The proximity of shopping malls/market to the property’s precise location | F4 | |
The proximity of worship centres to the property’s precise location | F5 | |
The accessibility of transportation services | F6 | |
The proximity of healthcare facilities to the property’s precise location | F7 | |
The population density where the property is situated | F8 | |
Neighbourhood | The property’s neighbourhood road network | F9 |
The neighbourhood’s serenity | F10 | |
The neighbourhood’s topography/terrain | F11 | |
Availability of electricity and other infrastructural supplies | F12 | |
The susceptibility of the neighbourhood to flooding | F13 | |
The neighbourhood’s drainage system | F14 | |
The neighbourhood’s crime rate | F15 | |
The neighbourhood’s level of pollution | F16 |
Category | Factors | Code |
---|---|---|
Structural | The size of the building and/or land | F17 |
The size of the living and/or dining area | F18 | |
The number of bathrooms in the property | F19 | |
The interior and exterior façades of the property | F20 | |
The design and aesthetics of the property | F21 | |
The condition and age of the property | F22 | |
The availability of parking space | F23 | |
The number of rooms within a property | F24 | |
Market/Economic | The investment cost compared with its associated benefits | F25 |
The analysis of the market conditions | F26 | |
The future economic conditions | F27 |
Category | Factors | Code |
---|---|---|
Behavioural | Sentiment (bias) regarding investment | F28 |
Experience in real estate investment | F29 | |
Reliance on other people’s investment decisions | F30 | |
Psychological preparedness to cope with flooding | F31 | |
Financial preparedness to cope with flooding | F32 | |
Emotional attachment and willingness to take risks | F33 | |
Attitude towards risk that is independent of financial circumstances | F34 | |
Behavioural influence | F35 | |
Risk | The risk level associated with the property’s location | F36 |
The level of risk awareness | F37 |
3.6. Methods of Analysis
4. Results and Discussion
5. Perceptions and Considerations
6. Conclusions and Recommendations
- (a)
- From the private investors’ purview, eight factors were recorded as the most important factors influencing property investment decisions in areas prone to flooding: F1 (the actual location of the property), F3 (the distance to the workplace), F6 (the accessibility of transportation services), F10 (the neighbourhood’s serenity), F12 (the availability of electricity and other infrastructural supplies), F13 (the susceptibility of the neighbourhood to flooding), F15 (the neighbourhood’s crime rate), and F16 (the neighbourhood’s level of pollution).
- (b)
- From the estate agents’ purview, only five factors were recorded: F1 (the actual location of the property), F2 (the possibility that the actual location of the property will be flooded), F6 (the accessibility of transportation services), F9 (the property’s neighbourhood road network), and F12 (the availability of electricity and other infrastructural supplies).
- (c)
- In comparison, only three factors—F1 (the actual location of the property), F6 (the accessibility of transportation services), and F12 (the availability of electricity and other infrastructural supplies)—were common to both groups of respondents.
- (d)
- In calculating the results of the decision criteria rule table, the opinion of each respondent was calculated on a five-point Likert scale. For evaluating the perceptual analysis on which this paper was developed, a decision criterion was applied to ensure uniformity. As a result, since the research focused on a developing nation, the researchers opted for the use of a unified measurement system for the proper classification of the results. Despite the range of different studies defining their own methods of classification, this study used the computation of finite-degree classification of the results—which is a unified measurement method in higher educational institutions—as a clustering technique for making informed decisions.
- (e)
- According to the perception plot, the highest determinants were the locational factors, followed by the neighbourhood factors. The plot also shows that behavioural factors have the highest bearing on the investment decisions for private investors, at 4.4, followed by the economic factors at 4.0 and the locational factors at 3.6. The plot also shows that neighbourhood factors have the highest bearing on the investment decisions for estate agents, at 4.6, followed by the economic factors at 4.0 and the locational factors at 3.6. This implies that there are various degrees of correlation between the factors examined in this study.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | No. of Items | Private Investors’ | Estate Agents’ | ||
---|---|---|---|---|---|
Actual | Standardised Items | Actual | Standardised Items | ||
Motivating Factors | 37 | 0.858 | 0.873 | 0.862 | 0.873 |
Respondents | Distributed | Returned | Valid |
---|---|---|---|
Private Investors | 111 (100.00%) | 89 (80.18%) | 75 (84.27%) |
Estate Agents | 186 (100.00%) | 93 (50.00%) | 75 (80.64%) |
Range of Mean Score | Interpretation |
---|---|
5.00 ≥ x ≤ 4.50 | Most significant |
4.49 ≥ x ≤ 3.50 | Significant |
3.49 ≥ x ≤ 2.40 | Moderately significant |
2.39 ≥ x ≤ 1.50 | Slightly significant |
1.00 ≥ x ≤ 1.49 | Less significant |
0.00 > x < 0.99 | Not significant |
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Oyetunji, A.K.; Amaechi, C.V.; Dike, E.C.; Ayoola, A.B.; Olukolajo, M.A. Factors Influencing Stakeholders’ Decision to Invest in Residential Properties: A Perceptual Analysis of Flood-Risk Areas. Buildings 2023, 13, 1560. https://doi.org/10.3390/buildings13061560
Oyetunji AK, Amaechi CV, Dike EC, Ayoola AB, Olukolajo MA. Factors Influencing Stakeholders’ Decision to Invest in Residential Properties: A Perceptual Analysis of Flood-Risk Areas. Buildings. 2023; 13(6):1560. https://doi.org/10.3390/buildings13061560
Chicago/Turabian StyleOyetunji, Abiodun Kolawole, Chiemela Victor Amaechi, Emmanuel Chigozie Dike, Adeyosoye Babatunde Ayoola, and Michael Ayodele Olukolajo. 2023. "Factors Influencing Stakeholders’ Decision to Invest in Residential Properties: A Perceptual Analysis of Flood-Risk Areas" Buildings 13, no. 6: 1560. https://doi.org/10.3390/buildings13061560
APA StyleOyetunji, A. K., Amaechi, C. V., Dike, E. C., Ayoola, A. B., & Olukolajo, M. A. (2023). Factors Influencing Stakeholders’ Decision to Invest in Residential Properties: A Perceptual Analysis of Flood-Risk Areas. Buildings, 13(6), 1560. https://doi.org/10.3390/buildings13061560