The Influence of Geo-Spatial Factors on Airbnb in New York City

Airbnb has gained extensive popularity worldwide in only 13 years since its emergence. The company has grown at a surprising speed, and it has enabled millions of individual hosts to participate in the tourist accommodation sector by revolutionizing traditional peer-to-peer lodging with a new techno...

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Main Author: Zhang, Ruone
Format: Dissertation (University of Nottingham only)
Language:English
Published: 2021
Online Access:https://eprints.nottingham.ac.uk/66483/
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author Zhang, Ruone
author_facet Zhang, Ruone
author_sort Zhang, Ruone
building Nottingham Research Data Repository
collection Online Access
description Airbnb has gained extensive popularity worldwide in only 13 years since its emergence. The company has grown at a surprising speed, and it has enabled millions of individual hosts to participate in the tourist accommodation sector by revolutionizing traditional peer-to-peer lodging with a new technology-driven online platform, unlike the hotels whose location is often analyzed by professional organizations and are restricted in commercial zones. The distribution of Airbnb is more random and dispersed since the hosts can be anywhere. The distribution of Airbnb listings in New York City shows apparent spatial heterogeneity. It is worth revealing the determinants behind the pattern. This study aims to reveal the influence of geo-spatial factors on the popularity of Airbnb listings in New York City. A complete dataset of 36230 Airbnb listings in New York City was collected from the Inside Airbnb website, and from which 7724 popular listings were identified. Besides, geographical data of subway stations, bus stops, and commercial pedestrian zones were collected and calculated as additional features of each listing. Two types of linear models were applied in this study. One is the General Linear Model that assumes global parameter estimates over the whole region. The other is the Geographically Weighted Regression which estimates parameters for each site differently depending on spatial correlations among neighboring regions. Model results prove that the Geographically Weighted Regression works better in goodness-of-fit and parameters’ accuracy and interpretability. The model reveals three geo-spatial features that Airbnb guests highly value. Primarily, the fast accessibility to Midtown Manhattan and Lower Manhattan should be within 30 minutes of transit trip length. Moreover, it would be better if multiple subway lines near the listing for convenient subway access to other places in the city. Finally, the listings are expected to be close to commercial districts or overlays where tourists can easily find restaurants and shops. Based on these patterns of popular listings, two types of locations for future Airbnb listings are recommended at the end of the paper.
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spelling nottingham-664832023-04-25T10:10:57Z https://eprints.nottingham.ac.uk/66483/ The Influence of Geo-Spatial Factors on Airbnb in New York City Zhang, Ruone Airbnb has gained extensive popularity worldwide in only 13 years since its emergence. The company has grown at a surprising speed, and it has enabled millions of individual hosts to participate in the tourist accommodation sector by revolutionizing traditional peer-to-peer lodging with a new technology-driven online platform, unlike the hotels whose location is often analyzed by professional organizations and are restricted in commercial zones. The distribution of Airbnb is more random and dispersed since the hosts can be anywhere. The distribution of Airbnb listings in New York City shows apparent spatial heterogeneity. It is worth revealing the determinants behind the pattern. This study aims to reveal the influence of geo-spatial factors on the popularity of Airbnb listings in New York City. A complete dataset of 36230 Airbnb listings in New York City was collected from the Inside Airbnb website, and from which 7724 popular listings were identified. Besides, geographical data of subway stations, bus stops, and commercial pedestrian zones were collected and calculated as additional features of each listing. Two types of linear models were applied in this study. One is the General Linear Model that assumes global parameter estimates over the whole region. The other is the Geographically Weighted Regression which estimates parameters for each site differently depending on spatial correlations among neighboring regions. Model results prove that the Geographically Weighted Regression works better in goodness-of-fit and parameters’ accuracy and interpretability. The model reveals three geo-spatial features that Airbnb guests highly value. Primarily, the fast accessibility to Midtown Manhattan and Lower Manhattan should be within 30 minutes of transit trip length. Moreover, it would be better if multiple subway lines near the listing for convenient subway access to other places in the city. Finally, the listings are expected to be close to commercial districts or overlays where tourists can easily find restaurants and shops. Based on these patterns of popular listings, two types of locations for future Airbnb listings are recommended at the end of the paper. 2021-09 Dissertation (University of Nottingham only) NonPeerReviewed application/pdf en https://eprints.nottingham.ac.uk/66483/1/20244435_BUSI4374_The%20Influence%20of%20Geo-Spatial%20Factors%20on%20Airbnb%20in%20New%20York%20City_2021.pdf Zhang, Ruone (2021) The Influence of Geo-Spatial Factors on Airbnb in New York City. [Dissertation (University of Nottingham only)]
spellingShingle Zhang, Ruone
The Influence of Geo-Spatial Factors on Airbnb in New York City
title The Influence of Geo-Spatial Factors on Airbnb in New York City
title_full The Influence of Geo-Spatial Factors on Airbnb in New York City
title_fullStr The Influence of Geo-Spatial Factors on Airbnb in New York City
title_full_unstemmed The Influence of Geo-Spatial Factors on Airbnb in New York City
title_short The Influence of Geo-Spatial Factors on Airbnb in New York City
title_sort influence of geo-spatial factors on airbnb in new york city
url https://eprints.nottingham.ac.uk/66483/