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首页> 外文期刊>Journal of nonlinear science >Variational Approach for Learning Markov Processes from Time Series Data
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Variational Approach for Learning Markov Processes from Time Series Data

机译:从时间序列数据学习马尔可夫进程的变分方法

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摘要

Inference, prediction, and control of complex dynamical systems from time series is important in many areas, including financial markets, power grid management, climate and weather modeling, or molecular dynamics. The analysis of such highly nonlinear dynamical systems is facilitated by the fact that we can often find a (generally nonlinear) transformation of the system coordinates to features in which the dynamics can be excellently approximated by a linear Markovian model. Moreover, the large number of system variables often change collectively on large time- and length-scales, facilitating a low-dimensional analysis in feature space. In this paper, we introduce a variational approach for Markov processes (VAMP) that allows us to find optimal feature mappings and optimal Markovian models of the dynamics from given time series data. The key insight is that the best linear model can be obtained from the top singular components of the Koopman operator. This leads to the definition of a family of score functions called VAMP-r which can be calculated from data, and can be employed to optimize a Markovian model. In addition, based on the relationship between the variational scores and approximation errors of Koopman operators, we propose a new VAMP-E score, which can be applied to cross-validation for hyper-parameter optimization and model selection in VAMP. VAMP is valid for both reversible and nonreversible processes and for stationary and nonstationary processes or realizations.
机译:从时间序列的复杂动态系统的推断,预测和控制在许多领域是重要的,包括金融市场,电网管理,气候和天气模型或分子动力学。促进了对这种高度非线性动力系统的分析,因为我们可以经常找到系统的(通常是非线性)转换,其坐标坐标,其中可以通过线性市场模型极好地近似动态。此外,大量的系统变量通常在大的时间和长度上统称,促进特征空间中的低维分析。在本文中,我们向马尔可夫进程(VAMP)引入了变分方法,其允许我们从给定的时间序列数据找到最佳特征映射和动态的最佳马尔科维亚模型。关键洞察力是,最好的线性模型可以从Koopman操作员的顶部奇异部件获得。这导致了可以从数据计算的vamp-R系列函数的定义,并且可以采用来优化Markovian模型。此外,基于Koopman运算符的变分数与近似误差之间的关系,我们提出了一种新的VAMP-E分数,可以应用于鞋面中超参数优化和模型选择的交叉验证。 VAMP适用于可逆和不可接近的流程和静止和非间断过程或实现。

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