Self Organization
Self-organization, the spontaneous emergence of order from simpler interactions, is a central theme in diverse scientific fields, aiming to understand how complex systems arise from basic components. Current research focuses on developing and applying computational models, including cellular automata, neural networks (both artificial and biologically-inspired), and adaptive filtering techniques, to study self-organization in various contexts, from biological systems and swarm robotics to social dynamics and climate modeling. These studies reveal fundamental principles governing pattern formation and emergent behavior, offering insights into the dynamics of complex systems and informing the design of robust and adaptable artificial systems. The findings have implications for diverse fields, including artificial intelligence, robotics, and the understanding of complex phenomena in nature and society.
Papers
Discovering Sensorimotor Agency in Cellular Automata using Diversity Search
Gautier Hamon, Mayalen Etcheverry, Bert Wang-Chak Chan, Clément Moulin-Frier, Pierre-Yves Oudeyer
Exploring Neuron Interactions and Emergence in LLMs: From the Multifractal Analysis Perspective
Xiongye Xiao, Chenyu Zhou, Heng Ping, Defu Cao, Yaxing Li, Yizhuo Zhou, Shixuan Li, Paul Bogdan