Document Type

Journal Article

Publication Date

2018

Keywords

Big data, Illegal accommodation, Institutional innovation, Transaction costs, Housing problem, Building stock management, Hong Kong

DOI

10.3390/su10082709

Abstract

While applications of big data have been extensively studied, discussion is mostly made from the perspectives of computer science, Internet services, and informatics. Alternatively, this article takes the big data approach as an institutional innovation and uses the problem of illegal subdivided units (ISUs) in Hong Kong as a case study. High transaction costs incurred in identification of suspected ISUs and associated enforcement actions lead to a proliferation of ISUs in the city. We posit that the deployment of big data analytics can lower these transaction costs, enabling the government to tackle the problem of illegal accommodations. We propose a framework for big data collection, analysis, and feedback. As the findings of a structured questionnaire survey reveal, building professionals believed that the proposed framework could reduce transaction costs of ISU identification. Yet, concerns associated with the big data approach like privacy and predictive policing were also raised by the professionals

Source Publication

Sustainability

Volume Number

10

First Page

1

Last Page

17

Included in

Real Estate Commons

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