Forced displacement has surged in recent years, fueling a global crisis. Over the past decade, the number of displaced people worldwide has nearly doubled, according to the United Nations鈥 refugee agency. In 2024 alone, one in 67 people fled their homes.
A new study co-authored by University of Notre Dame researcher shows that analyzing social media posts can help experts predict when people will move during crises, supporting faster and more effective aid delivery. The study highlights how powerful computational tools can help address major global challenges to human dignity.
鈥淭raditional data, such as surveys, are extremely difficult to collect during forced migration crises,鈥 said Marahrens, assistant professor of computational social science in Notre Dame鈥檚 . 鈥淎s early warning systems evolve, artificial intelligence and new digital data can help improve them. Ultimately this can help strengthen humanitarian responses, saving lives and reducing suffering.鈥
Providing timely aid to displaced people
The study, published in , analyzed three case studies. In Ukraine, 10.6 million people were displaced following Russia鈥檚 2022 invasion. In Sudan, approximately 12.8 million people were displaced following a civil war that broke out in April 2023. And in Venezuela, about 7 million people have been displaced in recent years because of multiple economic crises.
Researchers reviewed almost 2 million social media posts in three languages on X (formerly Twitter). They found that sentiment (positive, negative or neutral) was a more reliable signal for predicting when people were about to move than emotion (joy, anger or fear). Sentiment was particularly helpful at predicting the timing and volume of cross-border movements.
After comparing several approaches for analyzing social media posts, researchers found that pretrained language models provided the most effective early warning. These AI tools are trained on massive amounts of text using deep learning, a method that helps computers learn patterns much like the human brain.
鈥淥ur findings will help researchers refine models to predict how people move during conflict or disasters,鈥 Marahrens said.
Social media analysis seems to work best in conflict settings such as Ukraine, Marahrens said, but not as well in economic crises such as the ones Venezuela experienced, which unfolded more slowly.
He cautioned that such analyses can trigger false alarms. They are most valuable as an early trigger for deeper investigation, he said, particularly when combined with traditional data sources such as economic indicators and on-the-ground reports.
Future work could explore connections between sentiment and emotion, focusing on where they connect and diverge, Marahrens said. It could also examine how automated translation services could help researchers analyze more languages. Finally, future research could include data from additional social media networks.
鈥淭ogether, these improvements could help strengthen these tools,鈥 Marahrens said, 鈥渕aking them more helpful for policymakers and humanitarian organizations that work with displaced people.鈥
Marahrens, who joined Notre Dame this fall, works on a variety of issues related to globalization and inequality, applying his computational social science expertise to a range of research projects. He is affiliated with the Keough 91视频鈥檚 as well as the University鈥檚 .
The study received funding from the National Science Foundation and from Georgetown University鈥檚 Massive Data Institute.
Originally published by at on Nov. 17.
Contact: Tracy DeStazio, associate director of media relations, 574-631-9958 or tdestazi@nd.edu