Ant Colonies, Self-Organizing Maps, and A Hybrid Classification Model
نویسندگان
چکیده
Ant Colonies (or Swarm Intelligence) and Self-Organizing Maps (a type of unsupervised Neural Network) have become two important and powerful classification heuristics in computer science and artificial intelligence. After first describing each model, a hybrid is introduced that has the visual appeal of swarm intelligence and the efficiency of self-organizing maps.
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