2019
DOI: 10.1007/s11116-019-09988-4
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The evaluation of large cycling infrastructure investments in Glasgow using crowdsourced cycle data

Abstract: The benefits of cycling have been well established for several decades. It can improve public health and make cities more active and environmentally friendly. Due to the significant net benefits, many local governments in Scotland have promoted cycling. Glasgow City Council constructed four significant pieces of cycling infrastructure between 2013 and 2015, partly in preparation for the 2014 Commonwealth Games and partly to encourage cycling more generally. This required substantial capital investment. However… Show more

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Cited by 47 publications
(28 citation statements)
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“…Previous AT-related studies have primarily employed traditional data sources such as cordon counts and non-spatial regression model techniques such as the Poisson (Hong, McArthur, and Livingston 2020;C. Chen et al 2020), mixed logit (Kang and Fricker 2013;Lind, Honey-Rosés, and Corbera 2020), negative binomial (NB) (C. Chen et al 2020;Raihan et al 2019) and ordinary least squares (OLS) (Hong, McArthur, and Stewart 2020;Boss et al 2018) models.…”
Section: Questionsmentioning
confidence: 99%
“…Previous AT-related studies have primarily employed traditional data sources such as cordon counts and non-spatial regression model techniques such as the Poisson (Hong, McArthur, and Livingston 2020;C. Chen et al 2020), mixed logit (Kang and Fricker 2013;Lind, Honey-Rosés, and Corbera 2020), negative binomial (NB) (C. Chen et al 2020;Raihan et al 2019) and ordinary least squares (OLS) (Hong, McArthur, and Stewart 2020;Boss et al 2018) models.…”
Section: Questionsmentioning
confidence: 99%
“…However, implementation of bias correction requires advanced programming and statistical expertise. The uses of these data are just beginning to be understood and patterns in data have potential to help stratify count programmes (Brum-Bastos, and monitor change (Boss et al, 2018;Hong, McArthur, & Livingston, 2019). At present, cell phone GPS is not accurate enough to pick up sidewalk riding (Wergin & Buehler, 2017) and using GPS/accelerometry data to differentiate multimodal trips is problematic (Brondeel et al, 2015).…”
Section: Gps/ Accelerometrymentioning
confidence: 99%
“…It shows how the method can be used to detect popular and unpopular routes, and what factors might influence cycling route choices. Hong et al (2019) consider how Strava data can be put into an econometric framework to evaluate the effect of new infrastructure on cycling volumes. How to robustly estimate these effects is the paper's main focus.…”
Section: Weaknesses Of Previous Approachesmentioning
confidence: 99%
“…While the paper uses Strava data, it mostly utilises the Strava trip counts at a small geographical level (output area) to measure cycling activity rather than the link counts used in our present study. Hong et al (2019) do not consider what other factors might influence the strength of the relationship between counts of Strava cyclists and total counts. Our study considers how geography (used as a proxy for sociodemographic characteristics) and time period might influence the strength of the correlation.…”
Section: Weaknesses Of Previous Approachesmentioning
confidence: 99%
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