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A multi-level grammar approach to grammar-guided genetic programming: the case of scheduling in heterogeneous networks

机译:语法指导遗传程序设计的多级语法方法:异构网络中的调度情况

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摘要

The scale at which the human race consumes data has increased exponentially in recent years. One key part in this increase has been the usage of smart phones and connected devices by the populous. Multi-level heterogeneous networks are the driving force behind this mobile revolution, but these are constrained with limited bandwidth and over-subscription. Scheduling users on these networks has become a growing issue. In recent years grammar-guided genetic programming (G3P) has shown its capability to evolve beyond human-competitive network schedulers. Despite the performance of the G3P schedulers, a large margin of improvement is demonstrated to still exist. In the pursuit of this goal we recently proposed a multi-level grammar approach to generating schedulers. The complexity of the grammar was increased at various stages during evolution, allowing for individuals to add more complex functions through variation operations. The goal is to evolve good quality solutions before allowing the population to specialise more as the grammar functionality increased in a layered learning way. In this paper the results of this initial study are replicated, and confirmed, and it is seen that this approach improves the quality of the evolved schedulers. However, despite the gain in performance, we notice that the proposed approach comes with an acute sensitivity to the generation at which the grammar complexity is increased. Therefore, we put forward a novel seeding strategy and show that the seeding strategy mitigates the shortcomings of the original approach. The use of the seeding strategy outperforms the original approach in all the studied cases, and thus yields a better overall performance than the state-of-the-art G3P generated schedulers.
机译:近年来,人类消费数据的规模呈指数增长。增长的一个关键部分是人口对智能手机和连接设备的使用。多层异构网络是这场移动革命的推动力,但是这些受限于有限的带宽和超额订购。在这些网络上调度用户已成为一个日益严重的问题。近年来,语法指导的遗传编程(G3P)已显示出超越人类竞争网络调度程序的能力。尽管G3P调度程序具有出色的性能,但仍然存在很大的改进余地。为了实现这一目标,我们最近提出了一种用于生成调度程序的多层语法方法。语法的复杂性在进化的各个阶段都增加了,允许个人通过变异操作添加更多复杂的功能。目标是在语法功能以分层的学习方式增加后,允许人群进行更多的专业化之前,开发高质量的解决方案。在本文中,该初始研究的结果已被复制并得到证实,并且可以看出,这种方法提高了演进调度程序的质量。但是,尽管性能有所提高,但我们注意到,所提出的方法对语法复杂度增加的一代具有敏锐的敏感性。因此,我们提出了一种新颖的播种策略,并表明该播种策略减轻了原始方法的缺点。在所有研究的案例中,播种策略的使用都优于原始方法,因此与最新的G3P生成的调度程序相比,其总体性能更好。

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