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首页> 外文期刊>Computational Intelligence and AI in Games, IEEE Transactions on >Evolving Multimodal Networks for Multitask Games
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Evolving Multimodal Networks for Multitask Games

机译:不断发展的用于多任务游戏的多模式网络

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Intelligent opponent behavior makes video games interesting to human players. Evolutionary computation can discover such behavior, however, it is challenging to evolve behavior that consists of multiple separate tasks. This paper evaluates three ways of meeting this challenge via neuroevolution: 1) multinetwork learns separate controllers for each task, which are then combined manually; 2) multitask evolves separate output units for each task, but shares information within the network's hidden layer; and 3) mode mutation evolves new output modes, and includes a way to arbitrate between them. Whereas the first two methods require that the task division be known, mode mutation does not. Results in Front/Back Ramming and Predator/Prey games show that each of these methods has different strengths. Multinetwork is good in both domains, taking advantage of the clear division between tasks. Multitask performs well in Front/Back Ramming, in which the relative difficulty of the tasks is even, but poorly in Predator/Prey, in which it is lopsided. Interestingly, mode mutation adapts to this asymmetry and performs well in Predator/Prey. This result demonstrates how a human-specified task division is not always the best. Altogether the results suggest how human knowledge and learning can be combined most effectively to evolve multimodal behavior.
机译:聪明的对手行为使电子游戏对人类玩家变得有趣。进化计算可以发现这种行为,但是,要进化由多个独立任务组成的行为则具有挑战性。本文评估了通过神经进化来应对这一挑战的三种方式:1)多网络为每个任务学习单独的控制器,然后将其手动组合; 2)多任务为每个任务扩展单独的输出单元,但在网络的隐藏层内共享信息;和3)模式突变发展出新的输出模式,并包括一种在它们之间进行仲裁的方法。前两种方法要求知道任务划分,而模式突变则不知道。正面/背面夯实和捕食者/猎物游戏的结果表明,每种方法都有不同的优势。充分利用任务之间的明确划分,多网络在这两个域中都是很好的。多任务在“前/后夯实”中表现较好,其中任务的相对难度是均匀的,但在“掠食者/猎物”中则表现不佳,在这种情况下它会偏斜。有趣的是,模式突变适应了这种不对称性,并在捕食者/猎物中表现良好。此结果表明,人工指定的任务划分并非总是最好的。总的来说,结果表明如何将人类的知识和学习最有效地结合起来以发展多式联运行为。

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