动态网络中信息传播的平滑分析

M. Dinitz, Jeremy T. Fineman, Seth Gilbert, Calvin C. Newport
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引用次数: 1

摘要

在规模为$n$的动态网络中,最著名的$k$ -消息广播解决方案需要$\Omega(nk)$轮。在本文中,我们看到这些边界是否可以通过光滑分析来改进。我们研究了在这种情况下传播令牌的最自然的随机算法:在每个时间步骤,从您知道的令牌集中随机选择一个令牌进行广播。我们表明,即使使用少量平滑(每轮添加一个随机边缘),这种自然策略也可以在$\tilde{O}(n+k^3)$轮中以高概率解决$k$ -消息广播,击败$k=o(\sqrt{n})$的已知边界,并匹配$k=O(n^{1/3})$的静态网络的$\Omega(n+k)$下界(忽略对数因素)。事实上,我们展示的主要结果甚至更强大和更普遍:给定$\ell$ -平滑(即,每轮添加$\ell$随机边),这个简单的策略在$O(kn^{2/3}\log^{1/3}(n)\ell^{-1/3})$轮中终止。然后我们用一个几乎匹配的下界证明了这个分析接近紧密。为了更好地理解平滑对信息传播的影响,我们接下来将注意力转向静态网络,证明了求解$k$ -消息广播的$\tilde{O}(k\sqrt{n})$轮的紧密边界,这比我们的策略在动态设置中所能实现的要好。这证实了尽管平滑分析减少了由改变图结构引起的困难,但它并没有完全消除它们。最后,我们应用我们的工具证明了在没有平滑的情况下,在所谓的良好混合网络中$k$ -消息广播的最佳结果。通过将该结果与现有的良好混合网络的下界进行比较,我们建立了关于良好混合令牌传播的遗忘和强自适应对手之间的正式分离,部分解决了对手强度对$k$ -消息广播问题的影响的开放问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smoothed Analysis of Information Spreading in Dynamic Networks
The best known solutions for $k$-message broadcast in dynamic networks of size $n$ require $\Omega(nk)$ rounds. In this paper, we see if these bounds can be improved by smoothed analysis. We study perhaps the most natural randomized algorithm for disseminating tokens in this setting: at every time step, choose a token to broadcast randomly from the set of tokens you know. We show that with even a small amount of smoothing (one random edge added per round), this natural strategy solves $k$-message broadcast in $\tilde{O}(n+k^3)$ rounds, with high probability, beating the best known bounds for $k=o(\sqrt{n})$ and matching the $\Omega(n+k)$ lower bound for static networks for $k=O(n^{1/3})$ (ignoring logarithmic factors). In fact, the main result we show is even stronger and more general: given $\ell$-smoothing (i.e., $\ell$ random edges added per round), this simple strategy terminates in $O(kn^{2/3}\log^{1/3}(n)\ell^{-1/3})$ rounds. We then prove this analysis close to tight with an almost-matching lower bound. To better understand the impact of smoothing on information spreading, we next turn our attention to static networks, proving a tight bound of $\tilde{O}(k\sqrt{n})$ rounds to solve $k$-message broadcast, which is better than what our strategy can achieve in the dynamic setting. This confirms that although smoothed analysis reduces the difficulties induced by changing graph structures, it does not eliminate them altogether. Finally, we apply our tools to prove an optimal result for $k$-message broadcast in so-called well-mixed networks in the absence of smoothing. By comparing this result to an existing lower bound for well-mixed networks, we establish a formal separation between oblivious and strongly adaptive adversaries with respect to well-mixed token spreading, partially resolving an open question on the impact of adversary strength on the $k$-message broadcast problem.
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