Estimating Mixed-Mode Urban Trail Traffic Using Negative Binomial Regression Models
Xize Wanga (University of Southern California), Greg Lindsey, (University of Minnesota), Steve Hankey (University of Minnesota), Kris Hoff, (National Community Stabilization Trust)

TL;DR
This paper develops and validates eight negative binomial regression models to accurately estimate urban trail traffic using various socio-demographic, environmental, and temporal factors, aiding urban transportation planning.
Contribution
It introduces multiple tailored negative binomial models for different spatial and temporal scenarios, improving traffic estimation accuracy over traditional methods.
Findings
Models estimate traffic within approximately 16.3% error.
Negative binomial models outperform ordinary least squares regression.
Models incorporate diverse variables like weather, demographics, and time.
Abstract
Data and models of non-motorized traffic on multiuse urban trails are needed to improve planning and management of urban transportation systems. Negative binomial regression models are appropriate and useful when dependent variables are non-negative integers with over-dispersion like traffic counts. This paper presents eight negative binomial models for estimating urban trail traffic using 1,898 daily mixed-mode traffic counts from active infrared monitors at six locations in Minneapolis, MN. Our models include up to 10 independent variables that represent socio-demographic, built environment, weather, and temporal characteristics. A general model can be used to estimate traffic at locations where traffic has not been monitored. A six-location model with dummy variables for each monitoring site rather than neighborhood specific variables can be used to estimate traffic at existing…
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