递归揭示复杂时间序列的共同因果驱动

IF 11.6 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY
William Gilpin
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引用次数: 0

摘要

无法测量的因果力量影响着各种实验时间序列,例如调节基因的转录因子或引导运动回路的降序神经元。我们将斜积动态系统理论与拓扑数据分析相结合,证明了多个时间序列中同时发生的复现事件揭示了它们共同的未观测驱动信号的结构。我们介绍了一种基于物理学的无监督学习算法,该算法通过迭代建立具有玻璃结构的递归图来重建因果驱动因素。随着数据量的增加,该图上的渗滤转变会导致随机游走的弱遍历性破缺--揭示出共享驱动力的动态,即使是来自强破坏性测量的数据。我们将重构精度与从混沌驱动系统到响应系统的信息传输速率联系起来,发现有效的重构是通过逐步逼近驱动系统的动态吸引子进行的。通过对经典信号处理和机器学习技术的广泛基准测试,我们证明了我们的方法有能力从涵盖生态学、基因组学、流体动力学和生理学的各种实验数据集中提取因果驱动因素。 美国物理学会出版 2025
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrences Reveal Shared Causal Drivers of Complex Time Series
Unmeasured causal forces influence diverse experimental time series, such as the transcription factors that regulate genes or the descending neurons that steer motor circuits. Combining the theory of skew-product dynamical systems with topological data analysis, we show that simultaneous recurrence events across multiple time series reveal the structure of their shared unobserved driving signal. We introduce a physics-based unsupervised learning algorithm that reconstructs causal drivers by iteratively building a recurrence graph with glasslike structure. As the amount of data increases, a percolation transition on this graph leads to weak ergodicity breaking for random walks—revealing the shared driver’s dynamics, even from strongly corrupted measurements. We relate reconstruction accuracy to the rate of information transfer from a chaotic driver to the response systems, and we find that effective reconstruction proceeds through gradual approximation of the driver’s dynamical attractor. Through extensive benchmarks against classical signal processing and machine learning techniques, we demonstrate our method’s ability to extract causal drivers from diverse experimental datasets spanning ecology, genomics, fluid dynamics, and physiology. Published by the American Physical Society 2025
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来源期刊
Physical Review X
Physical Review X PHYSICS, MULTIDISCIPLINARY-
CiteScore
24.60
自引率
1.60%
发文量
197
审稿时长
3 months
期刊介绍: Physical Review X (PRX) stands as an exclusively online, fully open-access journal, emphasizing innovation, quality, and enduring impact in the scientific content it disseminates. Devoted to showcasing a curated selection of papers from pure, applied, and interdisciplinary physics, PRX aims to feature work with the potential to shape current and future research while leaving a lasting and profound impact in their respective fields. Encompassing the entire spectrum of physics subject areas, PRX places a special focus on groundbreaking interdisciplinary research with broad-reaching influence.
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