Landau Theory of Adaptive Integration in Computational Intelligence
Dariusz Plewczynski

TL;DR
This paper introduces a Landau theory-based model for adaptive integration in computational intelligence, describing how multiple learning agents combine information dynamically, influenced by social impact theory, to reach consensus or maintain minority opinions.
Contribution
It develops a novel Landau theory framework for modeling adaptive information integration among independent learning agents in CI.
Findings
The model captures the influence dynamics among agents.
Consensus is achieved via majority rule in the stationary limit.
Minority opinions can persist as complex clusters.
Abstract
Computational Intelligence (CI) is a sub-branch of Artificial Intelligence paradigm focusing on the study of adaptive mechanisms to enable or facilitate intelligent behavior in complex and changing environments. There are several paradigms of CI [like artificial neural networks, evolutionary computations, swarm intelligence, artificial immune systems, fuzzy systems and many others], each of these has its origins in biological systems [biological neural systems, natural Darwinian evolution, social behavior, immune system, interactions of organisms with their environment]. Most of those paradigms evolved into separate machine learning (ML) techniques, where probabilistic methods are used complementary with CI techniques in order to effectively combine elements of learning, adaptation, evolution and Fuzzy logic to create heuristic algorithms that are, in some sense, intelligent. The…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Neural Networks and Applications · Neural Networks Stability and Synchronization
