Agent Based Model
Agent-based modeling (ABM) simulates complex systems by modeling the interactions of individual agents within an environment, aiming to understand emergent system-level behavior. Current research emphasizes scaling ABMs to larger populations, integrating advanced techniques like large language models and neural networks to enhance agent realism and decision-making, and developing methods for efficient calibration and validation using techniques like process mining and variational inference. This approach finds applications across diverse fields, from predicting disease outbreaks and optimizing organizational efficiency to understanding financial markets and social movements, offering valuable insights for policy design and scientific discovery.
Papers
TraderTalk: An LLM Behavioural ABM applied to Simulating Human Bilateral Trading Interactions
Alicia Vidler, Toby Walsh
Agent-based modeling for realistic reproduction of human mobility and contact behavior to evaluate test and isolation strategies in epidemic infectious disease spread
David Kerkmann, Sascha Korf, Khoa Nguyen, Daniel Abele, Alain Schengen, Carlotta Gerstein, Jens Henrik Göbbert, Achim Basermann, Martin J. Kühn, Michael Meyer-Hermann
Accelerating Hybrid Agent-Based Models and Fuzzy Cognitive Maps: How to Combine Agents who Think Alike?
Philippe J. Giabbanelli, Jack T. Beerman
Simulation of Social Media-Driven Bubble Formation in Financial Markets using an Agent-Based Model with Hierarchical Influence Network
Gonzalo Bohorquez, John Cartlidge
Reconciling Different Theories of Learning with an Agent-based Model of Procedural Learning
Sina Rismanchian, Shayan Doroudi
From Mobilisation to Radicalisation: Probing the Persistence and Radicalisation of Social Movements Using an Agent-Based Model
Emma F. Thomas, Mengbin Ye, Simon D. Angus, Tony J. Mathew, Winnifred Louis, Liam Walsh, Silas Ellery, Morgana Lizzio-Wilson, Craig McGarty