动力系统和平稳过程的经验风险最小化

IF 1.4 4区 数学 Q2 MATHEMATICS, APPLIED
Kevin McGoff;Andrew B Nobel
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引用次数: 6

摘要

我们介绍并分析了经验风险最小化的一般框架,其中感兴趣的观察和模型可能是平稳的系统或过程。在以动力学系统的形式提出的框架内,经验风险最小化可以作为两步程序来研究,其中(i)通过最小化累积每状态损失,将观测到的(但未知的)系统的轨迹与已知参考系统的轨迹拟合,以及(ii)从最佳拟合轨迹的初始状态获得不变参数估计。我们证明了最佳匹配轨迹的经验测度的弱极限是具有最小风险的观测系统和参考系统的动态不变耦合(联接)。此外,我们建立了风险最小化联接族是凸的和紧致的,并且它完全表征了估计参数的渐近行为,直接解决了可识别性问题。我们对经验风险最小化的分析适用于研究充分的问题,如最大似然估计和非线性回归,以及更复杂的问题,其中感兴趣的模型是平稳过程。为了说明后者,我们从受噪声影响的量化轨迹中对系统识别进行了扩展分析,噪声是动力学和统计学交叉的一个问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical risk minimization for dynamical systems and stationary processes
We introduce and analyze a general framework for empirical risk minimization in which the observations and models of interest may be stationary systems or processes. Within the framework, which is presented in terms of dynamical systems, empirical risk minimization can be studied as a two-step procedure in which (i) the trajectory of an observed (but unknown) system is fit by a trajectory of a known reference system via minimization of cumulative per-state loss, and (ii) an invariant parameter estimate is obtained from the initial state of the best fit trajectory. We show that the weak limits of the empirical measures of best-matched trajectories are dynamically invariant couplings (joinings) of the observed and reference systems with minimal risk. Moreover, we establish that the family of risk-minimizing joinings is convex and compact and that it fully characterizes the asymptotic behavior of the estimated parameters, directly addressing identifiability. Our analysis of empirical risk minimization applies to well-studied problems such as maximum likelihood estimation and non-linear regression, as well as more complex problems in which the models of interest are stationary processes. To illustrate the latter, we undertake an extended analysis of system identification from quantized trajectories subject to noise, a problem at the intersection of dynamics and statistics.
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来源期刊
CiteScore
3.90
自引率
0.00%
发文量
28
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