Erickson Wesley W, Steck Daniel A
Oregon Center for Optical, Molecular, and Quantum Science and Department of Physics, 1274 University of Oregon, Eugene, Oregon 97403-1274, USA.
Phys Rev E. 2022 Nov;106(5-1):054142. doi: 10.1103/PhysRevE.106.054142.
Extreme events are by nature rare and difficult to predict, yet are often much more important than frequent, typical events. An interesting counterpoint to the prediction of such events is their retrodiction-given a process in an outlier state, how did the events leading up to this endpoint unfold? In particular, was there only a single, massive event, or was the history a composite of multiple, smaller but still significant events? To investigate this problem we take heavy-tailed stochastic processes (specifically, the symmetric, α-stable Lévy processes) as prototypical random walks. A natural and useful characteristic scale arises from the analysis of processes conditioned to arrive in a particular final state (Lévy bridges). For final displacements longer than this scale, the scenario of a single, long jump is most likely, even though it corresponds to a rare, extreme event. On the other hand, for small final displacements, histories involving extreme events tend to be suppressed. To further illustrate the utility of this analysis, we show how it provides an intuitive framework for understanding three problems related to boundary crossings of heavy-tailed processes. These examples illustrate how intuition fails to carry over from diffusive processes, even very close to the Gaussian limit. One example yields a computationally and conceptually useful representation of Lévy bridges that illustrates how conditioning impacts the extreme-event content of a random walk. The other examples involve the conditioned boundary-crossing problem and the ordinary first-escape problem; we discuss the observability of the latter example in experiments with laser-cooled atoms.
极端事件本质上是罕见且难以预测的,但往往比频繁发生的典型事件更为重要。对于此类事件预测的一个有趣的对比点是它们的回溯预测——给定一个处于异常状态的过程,导致这个终点的事件是如何展开的?特别是,是否只有一个大规模事件,还是其历史是多个较小但仍然重要的事件的组合?为了研究这个问题,我们将重尾随机过程(具体来说,对称的α稳定列维过程)作为典型的随机游走。通过对条件到达特定最终状态的过程(列维桥)的分析,出现了一个自然且有用的特征尺度。对于大于这个尺度的最终位移,单次长跳的情况最有可能,尽管它对应于一个罕见的极端事件。另一方面,对于小的最终位移,涉及极端事件的历史往往会被抑制。为了进一步说明这种分析的实用性,我们展示了它如何为理解与重尾过程的边界穿越相关的三个问题提供一个直观的框架。这些例子说明了即使非常接近高斯极限,直觉也无法从扩散过程中延续过来。一个例子给出了列维桥的一种在计算和概念上都有用的表示,说明了条件如何影响随机游走的极端事件内容。其他例子涉及条件边界穿越问题和普通的首次逃逸问题;我们讨论了后一个例子在激光冷却原子实验中的可观测性。