Journal :: Evolutionary Intelligence
2016
Evolutionary Intelligence 9(4):181-202, 2016
This paper presents an evolutionary approach that, given a performance goal, produces a communication strategy that can improve a multi-agent systems performance with respect to the desired goal. The evolved strategy determines what, when, and to whom agents communicate. The ...MORE ⇓
This paper presents an evolutionary approach that, given a performance goal, produces a communication strategy that can improve a multi-agent systems performance with respect to the desired goal. The evolved strategy determines what, when, and to whom agents communicate. The proposed approach further enables tuning the trade-off between the performance goal and communication cost, to produce a strategy that achieves a good balance between the two objectives, according the systems designer needs. Experiments are designed to evaluate the approach using the Wumpus World application domain, with variations of three factors: fitness parameters (including objectives weights and action and communication costs), fitness goal, and simulation environment. Results show that the systems performance can be highly tuned by controlling communication, and that the presented approach has significant utilization in improving the performance with respect to the goal.
2011
Evolutionary Intelligence 4(3):165--182, 2011
Abstract This paper demonstrates for the first time that a learning classifier system can act as the core of a cognitive architecture to allow agents to co-evolve lexical and syntactic conventions for the efficient communication of conceptual strings during a language game ...