Paper by Gabriel Kreindler and Yuhei Miyauchi: “We show how to use commuting flows to infer the spatial distribution of income within a city. A simple workplace choice model predicts a gravity equation for commuting flows whose destination fixed effects correspond to wages. We implement this method with cell phone transaction data from Dhaka and Colombo. Model-predicted income predicts separate income data, at the workplace and residential level, and by skill group. Unlike machine learning approaches, our method does not require training data, yet achieves comparable predictive power. We show that hartals (transportation strikes) in Dhaka reduce commuting more for high model-predicted wage and high-skill commuters….(More)”.
Measuring Commuting and Economic Activity Inside Cities with Cell Phone Records
How to contribute:
Did you come across – or create – a compelling project/report/book/app at the leading edge of innovation in governance?
Share it with us at info@thelivinglib.org so that we can add it to the Collection!
About the Curator
Get the latest news right in your inbox
Subscribe to curated findings and actionable knowledge from The Living Library, delivered to your inbox every Friday
Related articles
Artificial Intelligence
DATA
Meaningful Engagement: Lessons from Canada and Other Democracies
Posted in May 23, 2026 by Stefaan Verhulst
E-Gov
INSTITUTIONAL INNOVATION
The GovTech Compass: Ten Principles for the Responsible Implementation of GovTech and Digital Public Infrastructure
Posted in May 22, 2026 by Stefaan Verhulst
DATA
Data Collaboratives
Global approaches to infectious disease surveillance and modeling
Posted in May 22, 2026 by Stefaan Verhulst