Direct Ridership Model of Rail Rapid Transit Systems in Canada
Author(s) -
Durning Matthew,
Townsend Craig
Publication year - 2015
Publication title -
transportation research record
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.624
H-Index - 119
eISSN - 2169-4052
pISSN - 0361-1981
DOI - 10.3141/2537-11
Subject(s) - transit (satellite) , ordinary least squares , socioeconomic status , context (archaeology) , transport engineering , variables , scope (computer science) , regression analysis , variable (mathematics) , geography , econometrics , business , public transport , computer science , statistics , engineering , economics , mathematics , environmental health , population , medicine , archaeology , programming language , mathematical analysis
A direct ridership model for Canadian rail rapid transit systems is presented. The goal of the study was to produce a ridership model to evaluate the specific context of Canadian rapid transit: no comprehensive model existed. Data were collected for Canada's five largest cities, including 342 stations with an average weekday ridership of more than 3 million passengers. Using bootstrapped ordinary least squares regression with station boardings as the dependent variable and 44 socio economic, built environment, and system attributes as potential explanatory variables, which were chosen after a review of the direct ridership model literature, the study yielded one model with an adjusted R 2 value of .8033. The results are similar to those of models constructed in the United States with respect to densities, land uses, and station amenities, and socioeconomic variables do not appear to be significant. The absence of socioeconomic variables in the final model indicates that planners and policy makers have significant scope to exert influence over transit use through land use planning, design, and service features.
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