Abstract

The residential real estate market is very important because most people’s wealth is in this sector, and it is an indicator of the economy. Real estate market data in general and market transaction data, in particular, are inherently spatiotemporal as each transaction has a location and time. Therefore, exploratory spatiotemporal methods can extract unique locational and temporal insight from property transaction data, but this type of data are usually unavailable or not sufficiently geocoded to implement spatiotemporal methods. In this article, exploratory spatiotemporal methods, including a space-time cube, were used to analyze the residential real estate market at small area scale in the Dublin Metropolitan Area over the last decade. The spatial patterns show that some neighborhoods are experiencing change, including gentrification and recent development. The extracted spatiotemporal patterns from the data show different urban areas have had varying responses during national and global crises such as the economic crisis in 2008–2011, the Brexit decision in 2016, and the COVID-19 pandemic. The study also suggests that Dublin is experiencing intraurban displacement of residential property transactions to the west of Dublin city, and we are predicting increasing spatial inequality and segregation in the future. The findings of this innovative and exploratory data-driven approach are supported by other work in the field regarding Dublin and other international cities. The article shows that the space-time cube can be used as complementary evidence for different fields of urban studies, urban planning, urban economics, real estate valuations, intraurban analytics, and monitoring sociospatial changes at small areas, and to understand residential property transactions in cities. Moreover, the exploratory spatiotemporal analyses of data have a high potential to highlight spatial structures of the city and relevant underlying processes. The value and necessity of open access to geocoded spatiotemporal property transaction data in social research are also highlighted.

Highlights

  • The real estate market is attractive from different perspectives to analyze urban problems such as spatial inequality [1,2], gentrification [3], land development [4], and urban economy [5]

  • The aim of this article is to explore the potential of residential property transaction data (collected from Property Services Regulatory Authority’s (PSRA) website to identify neighborhood change in Dublin and to address the following analytical research questions using exploratory spatiotemporal methods

  • The results have shown that the median price of properties in Dublin (Figure 3a) has increased constantly since the Irish housing crisis when the median price reached the minimum point in 2012

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Summary

Introduction

The real estate market is attractive from different perspectives to analyze urban problems such as spatial inequality [1,2], gentrification [3], land development [4], and urban economy [5]. Housing prices are not constant in all areas of the city, and intraurban variation of residential properties price is determined by different characteristics of the location, including urban facilities and services, environmental and socioeconomic conditions, and security and safety [6,7]. Having both spatial and temporal components allows researchers to explore and understand locational and temporal changes and reactions of the real estate market to space and time variations [15]. The aim of this article is to explore the potential of residential property transaction data (collected from Property Services Regulatory Authority’s (PSRA) website (http://psr.ie/; accessed on 16 May 2021) to identify neighborhood change in Dublin and to address the following analytical research questions using exploratory spatiotemporal methods

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