LGSep 8, 2021

A Clustering-aided Ensemble Method for Predicting Ridesourcing Demand in Chicago

arXiv:2109.03433v1
AI Analysis

This provides a new methodology for transportation researchers and practitioners to forecast travel demand for ridesourcing and micromobility, addressing spatial variations that limit model performance.

The study tackled the problem of forecasting ridesourcing demand by accounting for spatial heterogeneity, proposing a Clustering-aided Ensemble Method (CEM) that splits origin-destination pairs into clusters and ensembles cluster-specific models, resulting in significantly improved prediction accuracy compared to benchmark models.

Accurately forecasting ridesourcing demand is important for effective transportation planning and policy-making. With the rise of Artificial Intelligence (AI), researchers have started to utilize machine learning models to forecast travel demand, which, in many cases, can produce higher prediction accuracy than statistical models. However, most existing machine-learning studies used a global model to predict the demand and ignored the influence of spatial heterogeneity (i.e., the spatial variations in the impacts of explanatory variables). Spatial heterogeneity can drive the parameter estimations varying over space; failing to consider the spatial variations may limit the model's prediction performance. To account for spatial heterogeneity, this study proposes a Clustering-aided Ensemble Method (CEM) to forecast the zone-to-zone (census-tract-to-census-tract) travel demand for ridesourcing services. Specifically, we develop a clustering framework to split the origin-destination pairs into different clusters and ensemble the cluster-specific machine learning models for prediction. We implement and test the proposed methodology by using the ridesourcing-trip data in Chicago. The results show that, with a more transparent and flexible model structure, the CEM significantly improves the prediction accuracy than the benchmark models (i.e., global machine-learning and statistical models directly trained on all observations). This study offers transportation researchers and practitioners a new methodology of travel demand forecasting, especially for new travel modes like ridesourcing and micromobility.

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