分布函数的动力学起源

Chengxi Zang, Peng Cui, Wenwu Zhu, Fei Wang
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引用次数: 5

摘要

许多现实世界的问题本质上都是时间进化的,比如疾病的发展、社交网络上发布帖子时的级联过程,或者气候的变化。表征这些复杂问题的观测数据通常只能在离散的时间戳上获得,这使得现有的分析这些问题的研究大多基于横截面分析。在本文中,我们试图用一个动态系统来模拟这些时间演化现象,在不同时间戳观测到的数据集是由这个动态系统产生的概率分布函数。我们提出了一个定理,它建立了用微分方程建模的动力系统与该系统横截面状态的分布函数(或生存函数)之间的数学关系。然后,我们开发了一个生存分析框架,从其横截面状态学习动力系统的微分方程。有了这样一个框架,我们就能够捕捉到进化系统的连续时间动态。我们在合成数据集和真实数据集上验证我们的框架。实验结果表明,该框架能够准确地发现和捕获各种数据分布的生成动力学。我们的研究可以潜在地促进对现实世界中复杂系统未知动力学的科学发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamical Origins of Distribution Functions
Many real-world problems are time-evolving in nature, such as the progression of diseases, the cascading process when a post is broadcasting in a social network, or the changing of climates. The observational data characterizing these complex problems are usually only available at discrete time stamps, this makes the existing research on analyzing these problems mostly based on a cross-sectional analysis. In this paper, we try to model these time-evolving phenomena by a dynamic system and the data sets observed at different time stamps are probability distribution functions generated by such a dynamic system. We propose a theorem which builds a mathematical relationship between a dynamical system modeled by differential equations and the distribution function (or survival function) of the cross-sectional states of this system. We then develop a survival analysis framework to learn the differential equations of a dynamical system from its cross-sectional states. With such a framework, we are able to capture the continuous-time dynamics of an evolutionary system.We validate our framework on both synthetic and real-world data sets. The experimental results show that our framework is able to discover and capture the generative dynamics of various data distributions accurately. Our study can potentially facilitate scientific discoveries of the unknown dynamics of complex systems in the real world.
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