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Evolving Neural Networks through a Reverse Encoding Tree

机译:通过反向编码树发展神经网络

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NeuroEvolution is one of the most competitive evolutionary learning strategies for designing novel neural networks for use in specific tasks, such as logic circuit design and digital gaming. However, the application of benchmark methods such as the NeuroEvolution of Augmenting Topologies (NEAT) remains a challenge, in terms of their computational cost and search time inefficiency. This paper advances a method which incorporates a type of topological edge coding, named Reverse Encoding Tree (RET), for evolving scalable neural networks efficiently. Using RET, two types of approaches – NEAT with Binary search encoding (Bi-NEAT) and NEAT with Golden-Section search encoding (GS-NEAT) – have been designed to solve problems in benchmark continuous learning environments such as logic gates, Cartpole, and Lunar Lander, and tested against classical NEAT and FS-NEAT as baselines. Additionally, we conduct a robustness test to evaluate the resilience of the proposed NEAT approaches. The results show that the two proposed approaches deliver improved performance, characterized by (1) a higher accumulated reward within a finite number of time steps; (2) using fewer episodes to solve problems in targeted environments, and (3) maintaining adaptive robustness under noisy perturbations, which outperform the baselines in all tested cases. Our analysis also demonstrates that RET expends potential future research directions in dynamic environments. Code is available from https://github.com/HaolingZHANG/ReverseEncodingTree.
机译:NeuroEvolution是设计用于特定任务(例如逻辑电路设计和数字游戏)的新型神经网络的最具竞争力的进化学习策略之一。然而,就其计算成本和搜索时间低效率而言,诸如增强神经拓扑进化(NEAT)之类的基准方法的应用仍然是一个挑战。本文提出了一种方法,该方法结合了一种称为反向编码树(RET)的拓扑边缘编码类型,可以有效地发展可伸缩神经网络。通过使用RET,设计了两种类型的方法-具有二进制搜索编码的NEAT(Bi-NEAT)和具有黄金分割搜索编码的NEAT(GS-NEAT)-用于解决基准连续学习环境中的问题,例如逻辑门,卡特波勒,和Lunar Lander,并针对经典NEAT和FS-NEAT作为基准进行了测试。此外,我们进行了鲁棒性测试,以评估所提出的NEAT方法的弹性。结果表明,所提出的两种方法可提供改进的性能,其特征是:(1)在有限的时间步长内获得更高的累积奖励; (2)使用较少的情节来解决目标环境中的问题,并且(3)在嘈杂的扰动下保持自适应鲁棒性,在所有测试情况下均优于基线。我们的分析还表明,RET在动态环境中扩展了潜在的未来研究方向。可从https://github.com/HaolingZHANG/ReverseEncodingTree获得代码。

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