奥恩斯坦-乌伦贝克过程的周期性分析

Vivek Kaushik
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引用次数: 0

摘要

在本论文中,我们考虑一个 $N$ 维的奥恩斯坦-乌伦贝克(OU)过程,该过程满足线性随机微分方程 $d\mathbf x(t) =- \mathbf B\mathbf x(t) dt + \boldsymbol \Sigma d \mathbf w(t)。这里,$\mathbfB$是一个固定的$N \times N$环形摩擦矩阵,其特征值的实部为正,$\boldsymbol \Sigma$是一个固定的$N \times M$矩阵。我们将考虑一个受此 OU 过程控制的信号传播模型。在这个模型中,一个基本信号在由位于空间的 $N$ 链接传感器组成的网络中传播。我们将 OU 过程的第 n 个分量解释为第 n 个传感器对传播效果的测量。矩阵 $\mathbf B$ 表示传感器网络结构:如果 $\mathbf B$ 的第一行为 $(b_1 \ , \ dots \ , \ b_N), $ 其中 $b_1>0$ 并且 $b_2 \ , \ dots \ , \ b_N \le 0, $ 那么 $b_p$ 的大小量化了 $n$-th 传感器对 $(n+p-1)$-th 传感器内活动的接受程度。最后,矩阵 $\mathbf D = \frac\{boldsymbol \Sigma \Sigma^\text T}{2}$ 的 $(m,n)$ 条目是注入 $m$-th 和 $n$-th 传感器的分量噪声的协方差。对于 $\mathbf B$ 和 $\boldsymbol \Sigma$ 的不同选择,我们研究了循环分析是否能让我们恢复网络结构。粗略地说,循环分析研究的是多变量信号成分的前导-滞后动态。我们特别考虑了一个 $N \times N$ 的倾斜对称矩阵 $/mathbf Q,$ 称为先导矩阵,其中 $(m,n)$-th 条目的符号捕捉了 $m$-th 和 $n$-th 分量 OU 过程之间的先导-滞后关系。我们研究了$\mathbf Q的前导特征向量的结构,即对应于$\mathbf Q的最大特征值的特征向量,是否反映了$\mathbf B所诱导的网络结构。
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Cyclicity Analysis of the Ornstein-Uhlenbeck Process
In this thesis, we consider an $N$-dimensional Ornstein-Uhlenbeck (OU) process satisfying the linear stochastic differential equation $d\mathbf x(t) = - \mathbf B\mathbf x(t) dt + \boldsymbol \Sigma d \mathbf w(t).$ Here, $\mathbf B$ is a fixed $N \times N$ circulant friction matrix whose eigenvalues have positive real parts, $\boldsymbol \Sigma$ is a fixed $N \times M$ matrix. We consider a signal propagation model governed by this OU process. In this model, an underlying signal propagates throughout a network consisting of $N$ linked sensors located in space. We interpret the $n$-th component of the OU process as the measurement of the propagating effect made by the $n$-th sensor. The matrix $\mathbf B$ represents the sensor network structure: if $\mathbf B$ has first row $(b_1 \ , \ \dots \ , \ b_N),$ where $b_1>0$ and $b_2 \ , \ \dots \ ,\ b_N \le 0,$ then the magnitude of $b_p$ quantifies how receptive the $n$-th sensor is to activity within the $(n+p-1)$-th sensor. Finally, the $(m,n)$-th entry of the matrix $\mathbf D = \frac{\boldsymbol \Sigma \boldsymbol \Sigma^\text T}{2}$ is the covariance of the component noises injected into the $m$-th and $n$-th sensors. For different choices of $\mathbf B$ and $\boldsymbol \Sigma,$ we investigate whether Cyclicity Analysis enables us to recover the structure of network. Roughly speaking, Cyclicity Analysis studies the lead-lag dynamics pertaining to the components of a multivariate signal. We specifically consider an $N \times N$ skew-symmetric matrix $\mathbf Q,$ known as the lead matrix, in which the sign of its $(m,n)$-th entry captures the lead-lag relationship between the $m$-th and $n$-th component OU processes. We investigate whether the structure of the leading eigenvector of $\mathbf Q,$ the eigenvector corresponding to the largest eigenvalue of $\mathbf Q$ in modulus, reflects the network structure induced by $\mathbf B.$
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Cyclicity Analysis of the Ornstein-Uhlenbeck Process Linear hypothesis testing in high-dimensional heteroscedastics via random integration Asymptotics for conformal inference Sparse Factor Analysis for Categorical Data with the Group-Sparse Generalized Singular Value Decomposition Incremental effects for continuous exposures
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