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Adaptive routing with end-to-end feedback

机译:具有端到端反馈的自适应路由

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Minimal delay routing is a fundamental task in networks. Since delays depend on the (potentially unpredictable) traffic distribution, online delay optimization can be quite challenging. While uncertainty about the current network delays may make the current routing choices sub-optimal, the algorithm can nevertheless try to learn the traffic patterns and keep adapting its choice of routing paths so as to perform nearly as well as the best static path. This online shortest path problem is a special case of online linear optimization, a problem in which an online algorithm must choose, in each round, a strategy from some compact set S ⊆ Rd so as to try to minimize a linear cost function which is only revealed at the end of the round. Kalai and Vempala[4] gave an algorithm for such problems in the transparent feedback model, where the entire cost function is revealed at the end of the round. Here we present an algorithm for online linear optimization in the more challenging opaque feedback model, in which only the cost of the chosen strategy is revealed at the end of the round. In the special case of shortest paths, opaque feedback corresponds to the notion that in each round the algorithm learns only the end-to-end cost of the chosen path, not the cost of every edge in the network.We also present a second algorithm for online shortest paths, which solves the shortest-path problem using a chain of online decision oracles, one at each node of the graph. This has several advantages over the online linear optimization approach. First, it is effective against an adaptive adversary, whereas our linear optimization algorithm assumes an oblivious adversary. Second, even in the case of an oblivious adversary, the second algorithm performs better than the first, as measured by their additive regret.
机译:最小延迟路由是网络中的一项基本任务。由于延迟取决于(可能无法预测的)流量分布,因此在线延迟优化可能会非常具有挑战性。尽管有关当前网络延迟的不确定性可能会使当前的路由选择次优,但是该算法仍可以尝试学习流量模式并保持适应其路由路径的选择,从而获得与最佳静态路径几乎相同的性能。这个在线最短路径问题是在线线性优化的特例,在该问题中,在线算法必须在每个回合中从一些紧缩集 S choose中选择一种策略。 R d ,以便尝试最小化仅在回合结束时显示的线性成本函数。 Kalai和Vempala [4]在透明反馈模型中给出了解决此类问题的算法,该模型在回合结束时揭示了整个成本函数。在这里,我们提出了一种更具挑战性的不透明反馈模型中的在线线性优化算法,该算法在回合结束时仅揭示所选策略的成本。在最短路径的特殊情况下,不透明的反馈对应于这样的观念,即算法在每一轮中仅学习所选路径的端到端成本,而不是网络中每个边缘的成本。我们还提出了第二种算法在线最短路径,它使用一系列在线决策预言来解决最短路径问题,在图的每个节点上一个。与在线线性优化方法相比,它具有多个优点。首先,它对适应性对手有效,而我们的线性优化算法假设一个遗忘的对手。第二,即使是在一个健忘的对手的情况下,第二算法也比第一算法表现更好,这是通过它们的累加后悔来衡量的。

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