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Noise tolerance for real-time evolutionary learning of cooperative predator-prey strategies

机译:捕食者-食饵合作策略实时进化学习的噪声容忍度

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Learning team-based strategies in real-time is a difficult task, much more so in the presence of noise. In our previous work in the Prey and Predators domain we introduced an algorithm capable of evolving cooperative team strategies in real-time using fitness evaluations against a perfect opponent model. This paper continues our work within the same domain, training a team of predators to capture a prey. We investigate the effect of varying degrees of opponent model noise in our learning system. In the presence of and in the effort to mitigate the effects of such noise we present modifications to our baseline system in the forms of Rescaled Mutation, Conservative Replacement and a combination of the two techniques. The results of the modifications are extremely promising. The combined approach in particular demonstrates a vast improvement and decreased variance in the performance of our team of predators in the presence of opponent model noise. Additionally, the noise-mitigating strategies employed do not adversely affect the performance of the real-time team learning system in the absence of noise.
机译:实时学习基于团队的策略是一项艰巨的任务,尤其是在存在噪音的情况下。在我们之前在“捕食者和捕食者”领域中的工作中,我们引入了一种算法,该算法能够根据对完美对手模型的适应性评估来实时发展合作团队策略。本文将继续我们在同一领域的工作,训练一组捕食者捕获猎物。我们研究了学习系统中不同程度的对手模型噪声的影响。在存在并努力减轻此类噪声影响的情况下,我们以重新定标的突变,保守替换和两种技术的组合形式对基线系统进行了修改。修改的结果非常有希望。组合方法尤其证明了在存在对手模型噪声的情况下,我们的捕食者团队的性能得到了极大的改善,并且减少了差异。另外,在没有噪声的情况下,采用的缓解噪声策略不会对实时团队学习系统的性能产生不利影响。

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