2023
DOI: 10.1177/03611981231189732
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National-Level Multimodal Origin–Destination Estimation Based on Passively Collected Location Data and Machine Learning Methods

Yixuan Pan,
Aref Darzi,
Mofeng Yang
et al.

Abstract: Along with the development of information and positioning technologies, there emerges passively collected location data that contain location observations with time information from various types of mobile devices. Passive location data are known for their large sample size and continuous behavior observations. However, they also require careful and comprehensive data processing and modeling algorithms for privacy protection and practical applications. In the meantime, the travel demand estimation of origin–de… Show more

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Cited by 1 publication
(1 citation statement)
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“…Trajectory data like GPS-base data and smartphone location data are known for their large sample size and continuous behavior observations, which allows researchers to identify travelers' temporal and spatial regularities hidden in datasets [50,51]. However, because of complex data structures and privacy protection, such data also require careful processing procedures before being usable for trip analysis [52].…”
Section: Extracting Daily Trip Features: Big Data Processing and Miningmentioning
confidence: 99%
“…Trajectory data like GPS-base data and smartphone location data are known for their large sample size and continuous behavior observations, which allows researchers to identify travelers' temporal and spatial regularities hidden in datasets [50,51]. However, because of complex data structures and privacy protection, such data also require careful processing procedures before being usable for trip analysis [52].…”
Section: Extracting Daily Trip Features: Big Data Processing and Miningmentioning
confidence: 99%