Simulating group dynamics and human behavior is an important problem for economists, educators, social scientists and many other specialties. Large language models (LLMs) provide a powerful new tool for getting computers to mimic human-like behavior. See how researchers build agents and environments so that LLM-powered agents can act in situations of interest. Then, see how the behavior of these agents can be analyzed and compared to human group dynamics.
In this colloquium, you will see agent-based simulations applied to the study of many kinds of groups, from classrooms to international relations. You will also see some general frameworks for creating LLM-based agents. Works presented in this colloquium are conducted in a variety of programming languages, any of which are compatible with Wolfram Notebooks.
Webinar ID
ae84ed00c673
Presenters
Yue Wu
PhD Student at Carnegie Mellon University
Ziyu Yao
Assistant Professor at George Mason University
Wenyue Hua
Ph.D. Student at Rutgers University
Lizhou Fan
Ph.D. Student at University of Michigan
Gati Aher
Ph.D. Student at Carnegie Mellon University
Razan Baltaji
Ph.D. Student at University of Illinois at Urbana-Champaign