The canary in the city: indicator groups as predictors of local rent increases

Abstract As cities grow, certain neighborhoods experience a particularly high demand for housing, resulting in escalating rents. Despite far-reaching socioeconomic consequences, it remains difficult to predict when and where urban neighborhoods will face such changes. To tackle this challenge, we ad...

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Main Authors: Aike A. Steentoft, Ate Poorthuis, Bu-Sung Lee, Markus Schläpfer
Format: Article
Language:English
Published: SpringerOpen 2018-07-01
Series:EPJ Data Science
Subjects:
Online Access:http://link.springer.com/article/10.1140/epjds/s13688-018-0151-y
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spelling doaj-d917f5171b904c5e8d69a72eed553b912020-11-25T00:27:30ZengSpringerOpenEPJ Data Science2193-11272018-07-017111510.1140/epjds/s13688-018-0151-yThe canary in the city: indicator groups as predictors of local rent increasesAike A. Steentoft0Ate Poorthuis1Bu-Sung Lee2Markus Schläpfer3Future Cities Laboratory, Singapore-ETH CentreSingapore University of Technology and DesignNanyang Technological UniversityFuture Cities Laboratory, Singapore-ETH CentreAbstract As cities grow, certain neighborhoods experience a particularly high demand for housing, resulting in escalating rents. Despite far-reaching socioeconomic consequences, it remains difficult to predict when and where urban neighborhoods will face such changes. To tackle this challenge, we adapt the concept of ‘bioindicators’, borrowed from ecology, to the urban context. The objective is to use an ‘indicator group’ of people to assess the quality of a complex environment and its changes over time. Specifically, we analyze 92 million geolocated Twitter records across five US cities, allowing us to derive socio-economic user profiles based on individual movement patterns. As a proof-of-concept, we define users with a ‘high-income-profile’ as an indicator group and show that their visitation patterns are a suitable indicator for expected future rent increases in different neighborhoods. The concept of indicator groups highlights the potential of closely monitoring only a specific subset of the population, rather than the population as a whole. If the indicator group is defined appropriately for the phenomenon of interest, this approach can yield early predictions while simultaneously reducing the amount of data that needs to be collected and analyzed.http://link.springer.com/article/10.1140/epjds/s13688-018-0151-yIndicator groupSocial sensingLBSNHousing prices
collection DOAJ
language English
format Article
sources DOAJ
author Aike A. Steentoft
Ate Poorthuis
Bu-Sung Lee
Markus Schläpfer
spellingShingle Aike A. Steentoft
Ate Poorthuis
Bu-Sung Lee
Markus Schläpfer
The canary in the city: indicator groups as predictors of local rent increases
EPJ Data Science
Indicator group
Social sensing
LBSN
Housing prices
author_facet Aike A. Steentoft
Ate Poorthuis
Bu-Sung Lee
Markus Schläpfer
author_sort Aike A. Steentoft
title The canary in the city: indicator groups as predictors of local rent increases
title_short The canary in the city: indicator groups as predictors of local rent increases
title_full The canary in the city: indicator groups as predictors of local rent increases
title_fullStr The canary in the city: indicator groups as predictors of local rent increases
title_full_unstemmed The canary in the city: indicator groups as predictors of local rent increases
title_sort canary in the city: indicator groups as predictors of local rent increases
publisher SpringerOpen
series EPJ Data Science
issn 2193-1127
publishDate 2018-07-01
description Abstract As cities grow, certain neighborhoods experience a particularly high demand for housing, resulting in escalating rents. Despite far-reaching socioeconomic consequences, it remains difficult to predict when and where urban neighborhoods will face such changes. To tackle this challenge, we adapt the concept of ‘bioindicators’, borrowed from ecology, to the urban context. The objective is to use an ‘indicator group’ of people to assess the quality of a complex environment and its changes over time. Specifically, we analyze 92 million geolocated Twitter records across five US cities, allowing us to derive socio-economic user profiles based on individual movement patterns. As a proof-of-concept, we define users with a ‘high-income-profile’ as an indicator group and show that their visitation patterns are a suitable indicator for expected future rent increases in different neighborhoods. The concept of indicator groups highlights the potential of closely monitoring only a specific subset of the population, rather than the population as a whole. If the indicator group is defined appropriately for the phenomenon of interest, this approach can yield early predictions while simultaneously reducing the amount of data that needs to be collected and analyzed.
topic Indicator group
Social sensing
LBSN
Housing prices
url http://link.springer.com/article/10.1140/epjds/s13688-018-0151-y
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