Location, location and professionalization: a multilevel hedonic analysis of Airbnb listing prices and revenue
Hedonic modelling techniques have frequently been used to examine real estate valuation, and they have recently started to be applied to short-term rental valuation. Relying on a web-scraped data set of all Airbnb transactions in New York City (NYC) between August 2014 and September 2016, this paper...
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Online Access: | http://dx.doi.org/10.1080/21681376.2019.1592699 |
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doaj-105dd67c466b461d91e84c5f7cc54eba2020-11-25T03:10:07ZengTaylor & Francis GroupRegional Studies, Regional Science2168-13762019-01-016114315610.1080/21681376.2019.15926991592699Location, location and professionalization: a multilevel hedonic analysis of Airbnb listing prices and revenueRobbin Deboosere0Danielle Jane Kerrigan1David Wachsmuth2Ahmed El-Geneidy3McGill UniversityMcGill UniversityMcGill UniversityMcGill UniversityHedonic modelling techniques have frequently been used to examine real estate valuation, and they have recently started to be applied to short-term rental valuation. Relying on a web-scraped data set of all Airbnb transactions in New York City (NYC) between August 2014 and September 2016, this paper presents the first hedonic regression model of Airbnb to take into account neighbourhood effects and to predict both average price per night and revenue generated by each listing. The model demonstrates that locational factors – above all, transit accessibility to jobs – and neighbourhood variation have a large impact on both price per night and monthly revenue, and further reveals how professionalization of the short-term rental market is driving more revenue to a narrower segment of hosts. Further, the findings suggest that Airbnb hosts earn a significant premium by converting long-term housing in accessible residential neighbourhoods into de facto Airbnb hotels. This premium incentivizes landlords and hosts with properties in accessible neighbourhoods to replace long-term tenants with short-term guests, forcing those in search of housing to less accessible neighbourhoods.http://dx.doi.org/10.1080/21681376.2019.1592699housingland useplanningreal estatetransportshort-term rentalshedonic analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Robbin Deboosere Danielle Jane Kerrigan David Wachsmuth Ahmed El-Geneidy |
spellingShingle |
Robbin Deboosere Danielle Jane Kerrigan David Wachsmuth Ahmed El-Geneidy Location, location and professionalization: a multilevel hedonic analysis of Airbnb listing prices and revenue Regional Studies, Regional Science housing land use planning real estate transport short-term rentals hedonic analysis |
author_facet |
Robbin Deboosere Danielle Jane Kerrigan David Wachsmuth Ahmed El-Geneidy |
author_sort |
Robbin Deboosere |
title |
Location, location and professionalization: a multilevel hedonic analysis of Airbnb listing prices and revenue |
title_short |
Location, location and professionalization: a multilevel hedonic analysis of Airbnb listing prices and revenue |
title_full |
Location, location and professionalization: a multilevel hedonic analysis of Airbnb listing prices and revenue |
title_fullStr |
Location, location and professionalization: a multilevel hedonic analysis of Airbnb listing prices and revenue |
title_full_unstemmed |
Location, location and professionalization: a multilevel hedonic analysis of Airbnb listing prices and revenue |
title_sort |
location, location and professionalization: a multilevel hedonic analysis of airbnb listing prices and revenue |
publisher |
Taylor & Francis Group |
series |
Regional Studies, Regional Science |
issn |
2168-1376 |
publishDate |
2019-01-01 |
description |
Hedonic modelling techniques have frequently been used to examine real estate valuation, and they have recently started to be applied to short-term rental valuation. Relying on a web-scraped data set of all Airbnb transactions in New York City (NYC) between August 2014 and September 2016, this paper presents the first hedonic regression model of Airbnb to take into account neighbourhood effects and to predict both average price per night and revenue generated by each listing. The model demonstrates that locational factors – above all, transit accessibility to jobs – and neighbourhood variation have a large impact on both price per night and monthly revenue, and further reveals how professionalization of the short-term rental market is driving more revenue to a narrower segment of hosts. Further, the findings suggest that Airbnb hosts earn a significant premium by converting long-term housing in accessible residential neighbourhoods into de facto Airbnb hotels. This premium incentivizes landlords and hosts with properties in accessible neighbourhoods to replace long-term tenants with short-term guests, forcing those in search of housing to less accessible neighbourhoods. |
topic |
housing land use planning real estate transport short-term rentals hedonic analysis |
url |
http://dx.doi.org/10.1080/21681376.2019.1592699 |
work_keys_str_mv |
AT robbindeboosere locationlocationandprofessionalizationamultilevelhedonicanalysisofairbnblistingpricesandrevenue AT daniellejanekerrigan locationlocationandprofessionalizationamultilevelhedonicanalysisofairbnblistingpricesandrevenue AT davidwachsmuth locationlocationandprofessionalizationamultilevelhedonicanalysisofairbnblistingpricesandrevenue AT ahmedelgeneidy locationlocationandprofessionalizationamultilevelhedonicanalysisofairbnblistingpricesandrevenue |
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