Quantifying Retail Agglomeration using Diverse Spatial Data

Abstract Newly available data on the spatial distribution of retail activities in cities makes it possible to build models formalized at the level of the single retailer. Current models tackle consumer location choices at an aggregate level and the opportunity new data offers for modeling at the ret...

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Main Authors: Duccio Piovani, Vassilis Zachariadis, Michael Batty
Format: Article
Language:English
Published: Nature Publishing Group 2017-07-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-017-05304-1
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spelling doaj-89be8a46b8754bd18514af4b355525f12020-12-08T00:08:44ZengNature Publishing GroupScientific Reports2045-23222017-07-01711810.1038/s41598-017-05304-1Quantifying Retail Agglomeration using Diverse Spatial DataDuccio Piovani0Vassilis Zachariadis1Michael Batty2Centre for Advanced Spatial Analysis (CASA), University College London (UCL)Prospective Labs Ltd, IDEA LondonCentre for Advanced Spatial Analysis (CASA), University College London (UCL)Abstract Newly available data on the spatial distribution of retail activities in cities makes it possible to build models formalized at the level of the single retailer. Current models tackle consumer location choices at an aggregate level and the opportunity new data offers for modeling at the retail unit level lacks an appropriate theoretical framework. The model we present here helps to address these issues. Based on random utility theory, we have built it around the idea of quantifying the role of floor-space and agglomeration in retail location choice. We test this model on the inner area of Greater London. The results are consistent with a super linear scaling of a retailer’s attractiveness with its floorspace, and with an agglomeration effect approximated as the total retail floorspace within a 300 m radius from each shop. Our model illustrates many of the issues involved in testing and validating urban simulation models involving spatial data and its aggregation to different spatial scales.https://doi.org/10.1038/s41598-017-05304-1
collection DOAJ
language English
format Article
sources DOAJ
author Duccio Piovani
Vassilis Zachariadis
Michael Batty
spellingShingle Duccio Piovani
Vassilis Zachariadis
Michael Batty
Quantifying Retail Agglomeration using Diverse Spatial Data
Scientific Reports
author_facet Duccio Piovani
Vassilis Zachariadis
Michael Batty
author_sort Duccio Piovani
title Quantifying Retail Agglomeration using Diverse Spatial Data
title_short Quantifying Retail Agglomeration using Diverse Spatial Data
title_full Quantifying Retail Agglomeration using Diverse Spatial Data
title_fullStr Quantifying Retail Agglomeration using Diverse Spatial Data
title_full_unstemmed Quantifying Retail Agglomeration using Diverse Spatial Data
title_sort quantifying retail agglomeration using diverse spatial data
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2017-07-01
description Abstract Newly available data on the spatial distribution of retail activities in cities makes it possible to build models formalized at the level of the single retailer. Current models tackle consumer location choices at an aggregate level and the opportunity new data offers for modeling at the retail unit level lacks an appropriate theoretical framework. The model we present here helps to address these issues. Based on random utility theory, we have built it around the idea of quantifying the role of floor-space and agglomeration in retail location choice. We test this model on the inner area of Greater London. The results are consistent with a super linear scaling of a retailer’s attractiveness with its floorspace, and with an agglomeration effect approximated as the total retail floorspace within a 300 m radius from each shop. Our model illustrates many of the issues involved in testing and validating urban simulation models involving spatial data and its aggregation to different spatial scales.
url https://doi.org/10.1038/s41598-017-05304-1
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AT vassiliszachariadis quantifyingretailagglomerationusingdiversespatialdata
AT michaelbatty quantifyingretailagglomerationusingdiversespatialdata
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