Mixtures of Neural Cellular Automata: A Stochastic Framework for Growth Modelling and Self-Organization
Journal:
arXiv
Published Date:
Jun 25, 2025
Abstract
Neural Cellular Automata (NCAs) are a promising new approach to model
self-organizing processes, with potential applications in life science.
However, their deterministic nature limits their ability to capture the
stochasticity of real-world biological and physical systems.
We propose the Mixture of Neural Cellular Automata (MNCA), a novel framework
incorporating the idea of mixture models into the NCA paradigm. By combining
probabilistic rule assignments with intrinsic noise, MNCAs can model diverse
local behaviors and reproduce the stochastic dynamics observed in biological
processes.
We evaluate the effectiveness of MNCAs in three key domains: (1) synthetic
simulations of tissue growth and differentiation, (2) image morphogenesis
robustness, and (3) microscopy image segmentation. Results show that MNCAs
achieve superior robustness to perturbations, better recapitulate real
biological growth patterns, and provide interpretable rule segmentation. These
findings position MNCAs as a promising tool for modeling stochastic dynamical
systems and studying self-growth processes.