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Mobility situations in Mexico City Metropolitan Zone: An exploration of time and distance in the journey to work through machine learning

Research output: Contribution to journalArticlepeer-review

Abstract

This study examines the determinants of commuting time and distance using the mobility situations framework in the Mexico City Metropolitan Zone (MCMZ), a megacity marked by spatial mismatch, socioeconomic segregation, and fragmented transport infrastructure. Using data from the 2017 Origin-Destination Survey, we classify 192 travel districts into four mobility situations—Short Commutes, Long Commutes, Travelscarps, and Wormholes—based on average commuting time and distance. Our approach combines spatial econometrics with a machine learning LASSO algorithm to evaluate 88 potential predictors across transport infrastructure, urban spatial structure, and socioeconomic conditions. Results show that each situation is driven by distinct factors: Short Commutes align with centrality and privilege; Long Commutes with exclusion and mass transit; Travelscarps with inefficient short trips from poor infrastructure; and Wormholes with efficient long trips through multimodal strategies. The study demonstrates the value of the mobility situations framework in a Global South city and highlights machine learning’s utility for variable selection and theory-building in journey-to-work research.

Original languageEnglish
Article number10.1177/23998083261428169
JournalEnvironment and Planning B: Urban Analytics and City Science
Early online date19 Feb 2026
DOIs
StateE-pub ahead of print - 19 Feb 2026

Keywords

  • Mexico city metropolitan zone
  • commuting inequality
  • mobility situations
  • spatial mismatch
  • urban accessibility

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