2016
DOI: 10.5198/jtlu.2016.840
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Synergistic neighborhood relationships with travel behavior: An analysis of travel in 30,000 US neighborhoods

Abstract: Abstract:A now substantial body of literature finds that land use and urban form have a statistically significant, albeit relatively modest, effect on travel behavior. Some scholars have suggested that various built-environment characteristics influence travel more in concert than when considered in isolation. Yet few previous studies have combined built-environment measures to create holistic descriptions of the overall character of neighborhoods, and fewer still have related these neighborhoods to residents'… Show more

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Cited by 36 publications
(49 citation statements)
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References 25 publications
(40 reference statements)
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“…Using traveler type as our outcome variable, and of 11 sociodemographic variables (See Appendix 1) as well as our identified neighbourhood typologies as explanatory variables, we explore the correlation between a student's travel behaviors, their socio-demographic characteristics, and the neighbourhood they live in. The use of logistic regression is common in travel mode choice modelling as it allows for the estimation of discreet results reflecting the binary nature of decision making (Voulgaris et al 2016;Sarjala, Broberg, and Hynynen 2015).…”
Section: Exploring Correlates Of Transportation Lifestylesmentioning
confidence: 99%
“…Using traveler type as our outcome variable, and of 11 sociodemographic variables (See Appendix 1) as well as our identified neighbourhood typologies as explanatory variables, we explore the correlation between a student's travel behaviors, their socio-demographic characteristics, and the neighbourhood they live in. The use of logistic regression is common in travel mode choice modelling as it allows for the estimation of discreet results reflecting the binary nature of decision making (Voulgaris et al 2016;Sarjala, Broberg, and Hynynen 2015).…”
Section: Exploring Correlates Of Transportation Lifestylesmentioning
confidence: 99%
“…The ability of households to live easily without cars has declined at the same time. A recent study shows that by 2010 only five percent of Census tracts saw solo driving as less than half of total trips (Voulgaris et al, 2017). Suburban sprawl has been the norm in the United States for the post-World War Two era and, over the past 30 years, specialisation within the real estate industry has contributed to most new construction now comprised of a single use-such as detached housing, office parks or shopping malls.…”
Section: Ingrained Auto Dependencementioning
confidence: 99%
“…Additionally, use of 2017 road network data should not have much influence on the results since we did not focus on specific locations (e.g., homes, facilities). Age of housing is also being used as proxy measure for urban form [17,58,79], as older homes in urban areas are more likely to be in older core areas of cities (near city center) with higher density mix land uses, sidewalks, and interconnected streets networks [80]. Finally, the temperature data for the warmest and coldest months in 2015 for all counties of NC and three counties of SC are collected from Land-Based Station Data of NOAA [81].…”
Section: Data Collectionmentioning
confidence: 99%