Is it possible to guide the process of self-organisation towards
specific patterns and outcomes? Wouldn't this be self-contradictory?
After all, a self-organising process assumes a transition into a more
organised form, or towards a more structured functionality, in the
absence of centralised control. Then how can we place the guiding
elements so that they do not override rich choices potentially
discoverable by an uncontrolled process?
This book presents different approaches to resolving this paradox. In
doing so, the presented studies address a broad range of phenomena,
ranging from autopoietic systems to morphological computation, and from
small-world networks to information cascades in swarms. A large variety
of methods is employed, from spontaneous symmetry breaking to
information dynamics to evolutionary algorithms, creating a rich
spectrum reflecting this emerging field.
Demonstrating several foundational theories and frameworks, as well as
innovative practical implementations, Guided Self-Organisation:
Inception, will be an invaluable tool for advanced students and
researchers in a multiplicity of fields across computer science, physics
and biology, including information theory, robotics, dynamical systems,
graph theory, artificial life, multi-agent systems, theory of
computation and machine learning.