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File Info : A Pheromone-Based Utility Model for Collaborative Foraging | EBOOK DOWNLOAD :A PHEROMONE-BASED UTILITY MODEL FOR COLLABORATIVE FORAGING |

Contents : A Pheromone-Based Utility Model for Collaborative Foraging Liviu Panait Department of Computer Science George Mason University lpanait@cs.gmu.edu Abstract Multi-agent research often borrows from biology where remarkable examples of collective intelligence may be found. One interesting example is ant colonies use of pheromones as a joint communication mechanism. In this paper we propose two pheromone-based algorithms for arti cial agent foraging trail-creation and other tasks. Whereas practically...[more]

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  • Verified : 2012-01-20
  • Source: cs.gmu.edu
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