Understanding transit ridership in an equity context through a comparison of statistical and machine learning algorithms

11/30/2022
by   Elnaz Yousefzadeh Barri, et al.
0

Building an accurate model of travel behaviour based on individuals' characteristics and built environment attributes is of importance for policy-making and transportation planning. Recent experiments with big data and Machine Learning (ML) algorithms toward a better travel behaviour analysis have mainly overlooked socially disadvantaged groups. Accordingly, in this study, we explore the travel behaviour responses of low-income individuals to transit investments in the Greater Toronto and Hamilton Area, Canada, using statistical and ML models. We first investigate how the model choice affects the prediction of transit use by the low-income group. This step includes comparing the predictive performance of traditional and ML algorithms and then evaluating a transit investment policy by contrasting the predicted activities and the spatial distribution of transit trips generated by vulnerable households after improving accessibility. We also empirically investigate the proposed transit investment by each algorithm and compare it with the city of Brampton's future transportation plan. While, unsurprisingly, the ML algorithms outperform classical models, there are still doubts about using them due to interpretability concerns. Hence, we adopt recent local and global model-agnostic interpretation tools to interpret how the model arrives at its predictions. Our findings reveal the great potential of ML algorithms for enhanced travel behaviour predictions for low-income strata without considerably sacrificing interpretability.

READ FULL TEXT

page 22

page 25

page 26

page 31

page 32

research
02/01/2021

Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark

Researchers have compared machine learning (ML) classifiers and discrete...
research
01/11/2023

A prediction and behavioural analysis of machine learning methods for modelling travel mode choice

The emergence of a variety of Machine Learning (ML) approaches for trave...
research
09/25/2021

Equality of opportunity in travel behavior prediction with deep neural networks and discrete choice models

Although researchers increasingly adopt machine learning to model travel...
research
11/30/2022

Interpretability and accessibility of machine learning in selected food processing, agriculture and health applications

Artificial Intelligence (AI) and its data-centric branch of machine lear...
research
01/27/2021

An Early Stopping Bayesian Data Assimilation Approach for Mixed-Logit Estimation

The mixed-logit model is a flexible tool in transportation choice analys...
research
07/16/2019

Information processing constraints in travel behaviour modelling: A generative learning approach

Travel decisions tend to exhibit sensitivity to uncertainty and informat...
research
11/13/2021

Spatial machine-learning model diagnostics: a model-agnostic distance-based approach

While significant progress has been made towards explaining black-box ma...

Please sign up or login with your details

Forgot password? Click here to reset