Adedolapo Ogungbire Data-verified

Affiliation confirmed via AI analysis of OpenAlex, ORCID, and web sources.

Researcher

Last publication 2024 Last refreshed 2026-05-16

unknown

2 h-index 4 pubs 142 cited

Biography and Research Information

OverviewAI-generated summary

Adedolapo Ogungbire’s research focuses on transportation patterns and their shifts, particularly in response to major societal events. Recent work investigates how ridesourcing services like Uber and Lyft adapted during the COVID-19 pandemic, using Chicago as a case study. Ogungbire has also applied machine learning to forecast workforce needs for state transportation agencies and employed explainable AI to understand telecommuting trends before, during, and after the pandemic. These studies contribute to understanding human mobility and the impact of public health crises on transportation systems and work behaviors. Ogungbire's scholarship metrics include an h-index of 2 and 4 total publications with 9 citations.

Metrics

  • h-index: 2
  • Publications: 4
  • Citations: 142

Selected Publications

  • Unlocking telecommuting patterns before, during, and after the COVID-19 pandemic: An explainable AI-driven study (2024)
    1 citation DOI OpenAlex
  • Hyperparameter Tuning in Machine Learning: A Comprehensive Review (2024)
    147 citations DOI OpenAlex
  • Workforce forecasting for state transportation agencies: A machine learning approach (2024)
    2 citations DOI OpenAlex
  • From stay-at-home to reopening: A look at how ridesourcing fared during the COVID-19 pandemic in Chicago, Illinois (2023)
    6 citations DOI OpenAlex
  • Examining the Impact of the COVID-19 Pandemic on Ridesourcing Usage: A Case Study of Chicago (2022)

View all publications on OpenAlex →

Collaborators

Researchers in the database who share publications

Similar Researchers

Based on overlapping research topics