摘要

Solving the shortest path problem is important in achieving high performance or to efficiently utilize resources in various kinds of networks, e.g., data communication networks and transportation networks. Fortunately, under independent additive link weights, this problem is solvable in polynomial time. However, in many real-life networks, the link weights (e.g., delay, bandwidth, failure probability) are often correlated due to spatial or temporal dependencies. These correlated link weights together might behave in a different manner and are not always additive. In this paper, we first propose two correlated link-weight models, namely (i) the deterministic correlated model and (ii) the (log-concave) stochastic correlated model. Subsequently, we study the shortest path problem under these two correlated models. We prove that the shortest path problem is NP-hard under the deterministic correlated model, and even cannot be approximated to arbitrary degree in polynomial time. On the other hand, we show that the shortest path problem is polynomial-time solvable under a nodal deterministic correlated model. Finally, we show that the shortest path problem under the (log-concave) stochastic correlated model can be solved by convex optimization.
机译:解决最短路径问题对于实现高性能或有效利用各种网络(例如,数据通信网络和运输网络)中的资源很重要。幸运的是,在独立的附加链接权重下,此问题可以在多项式时间内解决。然而,在许多现实网络中,链路权重(例如,延迟,带宽,故障概率)通常由于空间或时间依赖性而相关。这些相关的链接权重可能一起以不同的方式起作用,并且并不总是累加的。在本文中,我们首先提出两个相关的链接权重模型,即(i)确定性相关模型和(ii)(对数凹型)随机相关模型。随后,我们研究了这两个相关模型下的最短路径问题。我们证明,在确定性相关模型下,最短路径问题是NP难的,甚至在多项式时间内甚至无法近似到任意程度。另一方面,我们表明在节点确定性相关模型下,最短路径问题是多项式时间可解的。最后,我们证明了(对数-凹形)随机相关模型下的最短路径问题可以通过凸优化来解决。

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