Phase Transition in SONFIS and SORST

This study introduces new aspects of phase transition in two new hybrid intelligent systems called Self-Organizing Neuro-Fuzzy Inference System (SONFIS) and Self-Organizing Rough SeT (SORST). We show how our algorithms can be taken as a linkage of government-society interaction, where government catches various states of behaviors: "solid (absolute-oppressive) or flexible (democratic)". So, transition of such System, by changing of connectivity parameters (noise) and using a simple linear relation, from order to disorder states is inferred.

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