论文标题
通过路由优化来提取网络提取
Network extraction by routing optimization
论文作者
论文摘要
在许多情况下,路由优化是一个相关问题。直接解决此类优化问题通常在计算上是不可行的。最近的研究表明,人们可以将此问题变成解决一个动态方程系统的一个,而是可以使用数值方法有效地求解。这导致可以从各种路由问题中获取最佳网络拓扑。但是,根据最终网络拓扑的实际提取解决方案取决于数值细节,这可以防止对其拓扑特性进行准确的研究。在这种情况下,理论结果仅可完全访问专家受众,而对于非专家来说,现成的实现很少被可用或记录在上面。特别是,在这个框架中,最终的图形获取是一个充满挑战的问题。在这里,我们介绍了一种从与路由优化相关的动态方程中提取网络拓扑的方法,在各种参数的设置下。我们的方法是由三个步骤组成的:首先,它通过求解动态系统来提取最佳轨迹,然后预先提取网络,最后滤除潜在的冗余。值得注意的是,我们提出了一个原则上的模型来解决最后一步的过滤,并根据运输相关的成本函数给出定量解释。该原则过滤可以应用于更通用的问题,例如从图像中提取网络,因此超出了第一步中设想的方案。总体而言,这种新颖的算法使从业者可以通过结合数值方法,优化和网络理论的基本工具来轻松提取最佳网络拓扑。因此,我们提供了手动图提取的替代方法,该替代允许从各种最佳拓扑中扎根。
Routing optimization is a relevant problem in many contexts. Solving directly this type of optimization problem is often computationally unfeasible. Recent studies suggest that one can instead turn this problem into one of solving a dynamical system of equations, which can instead be solved efficiently using numerical methods. This results in enabling the acquisition of optimal network topologies from a variety of routing problems. However, the actual extraction of the solution in terms of a final network topology relies on numerical details which can prevent an accurate investigation of their topological properties. In this context, theoretical results are fully accessible only to an expert audience and ready-to-use implementations for non-experts are rarely available or insufficiently documented. In particular, in this framework, final graph acquisition is a challenging problem in-and-of-itself. Here we introduce a method to extract networks topologies from dynamical equations related to routing optimization under various parameters' settings. Our method is made of three steps: first, it extracts an optimal trajectory by solving a dynamical system, then it pre-extracts a network and finally, it filters out potential redundancies. Remarkably, we propose a principled model to address the filtering in the last step, and give a quantitative interpretation in terms of a transport-related cost function. This principled filtering can be applied to more general problems such as network extraction from images, thus going beyond the scenarios envisioned in the first step. Overall, this novel algorithm allows practitioners to easily extract optimal network topologies by combining basic tools from numerical methods, optimization and network theory. Thus, we provide an alternative to manual graph extraction which allows a grounded extraction from a large variety of optimal topologies.