论文标题

通过信号传导进行安全游戏的进化方法

Evolutionary Approach to Security Games with Signaling

论文作者

Żychowski, Adam, Mańdziuk, Jacek, Bondi, Elizabeth, Venugopal, Aravind, Tambe, Milind, Ravindran, Balaraman

论文摘要

绿色安全游戏已成为模拟涉及保护自然资源(例如野生动植物)的风景的流行方式。传感器(例如配备相机的无人机)也已经通过提供实时信息在这些情况下发挥作用。战略性地将人类和传感器防御者资源纳入了信号(SGS)的最新安全游戏的主题。但是,当前解决SGS的方法在时间或内存方面不能很好地扩展。因此,我们提出了一种新颖的SGS方法,该方法在该领域首次采用了进化计算范式:EASGS。 EASG通过在染色体和专门设计的一组运算符中编码的合适解决方案有效地搜索了巨大的SGS解决方案空间。操作员包括三种类型的突变,每种突变都集中在SGS解决方案的特定方面,优化的跨界和局部覆盖改进方案(EASG的模因方面)。我们还基于反映现实世界中SGS设置的密集或本地密集图引入了一套新的基准游戏。在大多数342个测试游戏实例中,EASG在时间的可扩展性,几乎持续的内存利用以及返回的Defender策略的质量方面(预期的回报)优于最先进的方法,包括增强学习方法。

Green Security Games have become a popular way to model scenarios involving the protection of natural resources, such as wildlife. Sensors (e.g. drones equipped with cameras) have also begun to play a role in these scenarios by providing real-time information. Incorporating both human and sensor defender resources strategically is the subject of recent work on Security Games with Signaling (SGS). However, current methods to solve SGS do not scale well in terms of time or memory. We therefore propose a novel approach to SGS, which, for the first time in this domain, employs an Evolutionary Computation paradigm: EASGS. EASGS effectively searches the huge SGS solution space via suitable solution encoding in a chromosome and a specially-designed set of operators. The operators include three types of mutations, each focusing on a particular aspect of the SGS solution, optimized crossover and a local coverage improvement scheme (a memetic aspect of EASGS). We also introduce a new set of benchmark games, based on dense or locally-dense graphs that reflect real-world SGS settings. In the majority of 342 test game instances, EASGS outperforms state-of-the-art methods, including a reinforcement learning method, in terms of time scalability, nearly constant memory utilization, and quality of the returned defender's strategies (expected payoffs).

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源