Democratizing Islamic home financing and reimagining fractional homeownership model: a conceptual framework via big data and blockchain technology
Rosylin Mohd Yusof,
Zaemah Zainuddin,
Hafirda Akma Bt Musaddad,
Siti Latipah Harun and
Mohd Aamir Adeeb Abdul Rahim
Journal of Islamic Accounting and Business Research, 2023, vol. 16, issue 2, 273-304
Abstract:
Purpose - This paper aims to propose a model for democratization of Islamic home financing to tackle the issue of sustainability of homeownership affordability. Design/methodology/approach - A conceptual framework and fractional equity model (FEM) are developed to incorporate big data analytics, artificial intelligence and blockchain technology in an ecosystem for affordability and sustainability of homeownership via the proposed financing model. In addition, the FEM adopts the simulation approach to show its validity in terms of liquidity when compared with traditional home financing. In this regard, this paper is focused on developing and demonstrating the feasibility of a new financing model, rather than testing specific hypotheses or relationships. This is to propose the democratization model for Islamic Home Financing that will not benefit the prospective home buyers without compromising the profitability of the financial institutions. Findings - The findings indicate that the proposed end-to-end solution within the financing ecosystem can lead to more efficient matching market between the buyers and sellers of houses, reduced transaction costs, greater transparency and enhanced efficiency which in the end could lead to lower costs of owning homes and sustained financial resilience among house owners. The findings indicate that the FEM model is able to increase homeownership with more elements of liquidity, marketability and sustainability for homebuyers. Research limitations/implications - This research highlights the potential of big data and blockchain technology in democratizing Islamic home financing and evidence that the transfer of ownership is possible through tokenization. However, this will require a mature financing environment to adapt the technology for practical application. Practical implications - The model proposes a solution to propagate shared prosperity among stakeholders such as the house buyers/owners, sellers, investors as well the government agencies. The proposed FEM model provides alternative home financing that is more marketable, flexible and sustainable for households/buyers and financiers. Social implications - It is hoped that with the proposed financing ecosystem to promote affordability and sustainability of homeownership via big data analytics, artificial intelligence and blockchain technology can lead to greater financial resilience for homeowners which can then be translated to enhanced well-being, increased productivity and can further promote economic growth. Originality/value - This research is a concept paper based on academic research and industry collaboration with a technology provider.
Keywords: Homeownership; Big data analytics; Artificial intelligence and blockchain technology; Financing model ecosystem; Block chain technology (search for similar items in EconPapers)
Date: 2023
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Persistent link: https://EconPapers.repec.org/RePEc:eme:jiabrp:jiabr-02-2022-0033
DOI: 10.1108/JIABR-02-2022-0033
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