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Evolutionary algorithms and Particle Swarm Optimization for artificial language evolution

机译:人工语言进化的进化算法和粒子群算法

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This paper reports upon two adaptive approaches for deriving words in an artificial language simulation. The efficacy of a Particle Swarm Optimization (PSO) method versus an Artificial Evolution (AE) method was examined for the purpose of adapting communication between agents. The objective of the study was for agents to derive a common (shared) lexicon for talking about food resources in the simulation environment. In the simulation, communication was essential for agent survival and as such facilitated lexicon adaptation. Results indicated that PSO was effective at adapting agents to quickly converge to a common lexicon, where, on average, one word for each food type was derived. AE required more method iterations to converge to a common lexicon that contained, on average, multiple words for each food type. However, there was greater word diversity in the lexicon converged upon by AE evolved agents, compared to that converged upon by PSO adapted agents.
机译:本文报告了两种在人工语言模拟中派生单词的自适应方法。为了适应代理之间的通信,检查了粒子群优化(PSO)方法与人工进化(AE)方法的效果。该研究的目的是让代理商获得一个共同的(共享的)词典,用于讨论模拟环境中的食物资源。在模拟中,交流对于代理生存至关重要,因此促进了词典适应。结果表明,PSO可以有效地使药剂适应快速收敛到一个通用的词典,在该词典中,平均每种食物类型可以得出一个词。 AE需要更多的方法迭代才能收敛到一个通用词典,该词典平均每种食物类型包含多个单词。但是,与PSO适应代理所聚合的词汇相比,AE进化代理所聚合的词典中的单词多样性更大。

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