Options
Gap analysis in decision support systems for real-estate in the era of the digital earth
Date Issued
2021
Date Available
2021-11-11T14:25:22Z
Abstract
Searching for a property is inherently a multicriteria spatial decision. The decision is primarily based on three high-level criteria composed of household needs, building facilities, and location characteristics. Location choice is driven by diverse characteristics; including but not limited to environmental factors, access, services, and the socioeconomic status of a neighbourhood. This article aims to identify the gap between theory and practice in presenting information on location choice by using a gap analysis methodology through the development of a seven-factor classification tool and an assessment of international property websites. Despite the availability of digital earth data, the results suggest that real-estate websites are poor at providing sufficient location information to support efficient spatial decision making. Based on a case study in Dublin, Ireland, we find that although neighbourhood digital earth data may be readily available to support decision making, the gap persists. We hypothesise that the reason is two-fold. Firstly, there is a technical challenge to transform location data into usable information. Secondly, the market may not wish to provide location information which can be perceived as negative. We conclude this article with a discussion of critical issues necessary for designing a spatial decision support system for real-estate decision making.
Sponsorship
European Commission
European Commission Horizon 2020
Type of Material
Journal Article
Publisher
Taylor & Francis
Journal
International Journal of Digital Earth
Volume
14
Issue
1
Start Page
121
End Page
138
Language
English
Status of Item
Peer reviewed
ISSN
1753-8947
This item is made available under a Creative Commons License
File(s)
No Thumbnail Available
Name
Digital earth 2020.docx
Size
817.72 KB
Format
Unknown
Checksum (MD5)
6ff833f430351611acbe6e04f243133c
Owning collection
Mapped collections