Overcoming Probabilistic Faults in Disoriented Linear Search

Konstantinos Georgiou, Nikos Giachoudis, E. Kranakis
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Abstract

We consider search by mobile agents for a hidden, idle target, placed on the infinite line. Feasible solutions are agent trajectories in which all agents reach the target sooner or later. A special feature of our problem is that the agents are $p$-faulty, meaning that every attempt to change direction is an independent Bernoulli trial with known probability $p$, where $p$ is the probability that a turn fails. We are looking for agent trajectories that minimize the worst-case expected termination time, relative to competitive analysis. First, we study linear search with one deterministic $p$-faulty agent, i.e., with no access to random oracles, $p\in (0,1/2)$. For this problem, we provide trajectories that leverage the probabilistic faults into an algorithmic advantage. Our strongest result pertains to a search algorithm (deterministic, aside from the adversarial probabilistic faults) which, as $p\to 0$, has optimal performance $4.59112+\epsilon$, up to the additive term $\epsilon$ that can be arbitrarily small. Additionally, it has performance less than $9$ for $p\leq 0.390388$. When $p\to 1/2$, our algorithm has performance $\Theta(1/(1-2p))$, which we also show is optimal up to a constant factor. Second, we consider linear search with two $p$-faulty agents, $p\in (0,1/2)$, for which we provide three algorithms of different advantages, all with a bounded competitive ratio even as $p\rightarrow 1/2$. Indeed, for this problem, we show how the agents can simulate the trajectory of any $0$-faulty agent (deterministic or randomized), independently of the underlying communication model. As a result, searching with two agents allows for a solution with a competitive ratio of $9+\epsilon$, or a competitive ratio of $4.59112+\epsilon$. Our final contribution is a novel algorithm for searching with two $p$-faulty agents that achieves a competitive ratio $3+4\sqrt{p(1-p)}$.
无方向线性搜索中概率错误的克服
我们考虑移动代理搜索一个隐藏的,空闲的目标,放置在无限线上。可行的解决方案是所有智能体或早或晚到达目标的智能体轨迹。我们的问题的一个特殊特征是代理是$p$ -错误的,这意味着每次改变方向的尝试都是一个独立的伯努利试验,具有已知的概率$p$,其中$p$是转弯失败的概率。相对于竞争分析,我们正在寻找最小化最坏情况预期终止时间的代理轨迹。首先,我们研究线性搜索与一个确定性$p$ -故障代理,即,没有访问随机预言,$p\in (0,1/2)$。对于这个问题,我们提供了将概率错误转化为算法优势的轨迹。我们最强的结果属于一个搜索算法(确定性的,除了对抗性概率错误),作为$p\to 0$,它具有最佳性能$4.59112+\epsilon$,直到可以任意小的附加项$\epsilon$。此外,对于$p\leq 0.390388$,它的性能低于$9$。当$p\to 1/2$时,我们的算法有性能$\Theta(1/(1-2p))$,我们也证明它是最优的,直到一个常数因子。其次,我们考虑了两个$p$ -故障代理$p\in (0,1/2)$的线性搜索,为此我们提供了三种不同优势的算法,即使$p\rightarrow 1/2$也具有有限的竞争比。实际上,对于这个问题,我们展示了代理如何独立于底层通信模型,模拟任何$0$错误代理(确定性的或随机的)的轨迹。因此,使用两个代理进行搜索,可以得到竞争比为$9+\epsilon$或竞争比为$4.59112+\epsilon$的解决方案。我们最后的贡献是一个新的算法,用于搜索两个$p$错误的代理,达到竞争比$3+4\sqrt{p(1-p)}$。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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