A Data-Driven Travel Mode Share Estimation Framework based on Mobile Device Location Data
Mofeng Yang, Yixuan Pan, Aref Darzi, Sepehr Ghader, Chenfeng Xiong and, Lei Zhang

TL;DR
This paper presents a data-driven framework that uses mobile device location data and machine learning to accurately estimate travel mode shares at large scales, overcoming limitations of traditional surveys.
Contribution
It introduces a novel framework combining trip end detection and mode imputation using machine learning, validated on large datasets with high accuracy.
Findings
Achieved 95% accuracy in trip end detection.
Achieved 93% accuracy in travel mode classification.
Framework effectively estimates travel demand and mode share across regions.
Abstract
Mobile device location data (MDLD) contains abundant travel behavior information to support travel demand analysis. Compared to traditional travel surveys, MDLD has larger spatiotemporal coverage of population and its mobility. However, ground truth information such as trip origins and destinations, travel modes, and trip purposes are not included by default. Such important attributes must be imputed to maximize the usefulness of the data. This paper tends to study the capability of MDLD on estimating travel mode share at aggregated levels. A data-driven framework is proposed to extract travel behavior information from the MDLD. The proposed framework first identifies trip ends with a modified Spatiotemporal Density-based Spatial Clustering of Applications with Noise (ST-DBSCAN) algorithm. Then three types of features are extracted for each trip to impute travel modes using machine…
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