Measuring accessibility: A Big Data perspective on Uber service waiting times

This study aims to relate information about the waiting times of ride-sourcing services, with specific reference to Uber, using socioeconomic variables from São Paulo, Brazil. The intention is to explore the possibility of using this measure as an accessibility proxy. A database was created with the...

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Bibliographic Details
Main Authors: André Insardi, Rodolfo Oliveira Lorenzo
Format: Article
Language:English
Published: Fundação Getulio Vargas 2019-12-01
Series:RAE: Revista de Administração de Empresas
Subjects:
Online Access:http://www.scielo.br/pdf/rae/v59n6/0034-7590-rae-59-06-0402.pdf
Description
Summary:This study aims to relate information about the waiting times of ride-sourcing services, with specific reference to Uber, using socioeconomic variables from São Paulo, Brazil. The intention is to explore the possibility of using this measure as an accessibility proxy. A database was created with the mean waiting time data per district, which was aggregated to a set of socioeconomic and transport infrastructure variables. From this database, a multiple linear regression model was built. In addition, the stepwise method selected the most significant variables. Moran’s I test confirmed the spatial distribution pattern of the measures, motivating the use of a spatial autoregressive model. The results indicate that physical variables, such as area and population density, are important to explain this relation. However, the mileage of district bus lines and the non-white resident rate were also significant. Besides, the spatial component indicates a possible relation to accessibility.
ISSN:0034-7590
2178-938X