越来越多的数据科学和机器学习问题依赖于张量的计算,这些计算比矩阵更好地捕获数据的多路关系和相互作用。当利用这一关键优势时,一个关键的挑战是开发计算上有效的算法,以从张量数据中提取有用的信息,这些信息同时构成腐败和不良条件。本文解决了张量强大的主成分分析(RPCA),该分析旨在从塔克分解下的稀疏腐败污染的观察结果中回收低排名的张量。为了最大程度地减少计算和内存足迹,我们建议通过缩放梯度下降(scaledgd)直接恢复低维张量因子(从量身定制的光谱初始化开始),并与迭代变化的阈值操作相结合腐败。从理论上讲,我们确定所提出的算法以恒定的速率与真实的低级张量线性收敛,而恒定的速率与其条件编号无关,只要损坏的水平不大。从经验上讲,我们证明,通过合成实验和现实世界应用,提出的算法比最先进的矩阵和张量RPCA算法更好,更可扩展的性能。
translated by 谷歌翻译
提供了一种强大而灵活的模型,可用于代表多属数据和多种方式相互作用,在科学和工程中的各个领域中发挥着现代数据科学中的不可或缺的作用。基本任务是忠实地以统计和计算的有效方式从高度不完整的测量中恢复张量。利用Tucker分解中的张量的低级别结构,本文开发了一个缩放的梯度下降(Scaledgd)算法,可以直接恢复具有定制频谱初始化的张量因子,并表明它以与条件号无关的线性速率收敛对于两个规范问题的地面真理张量 - 张量完成和张量回归 - 一旦样本大小高于$ n ^ {3/2} $忽略其他参数依赖项,$ n $是维度张量。这导致与现有技术相比的低秩张力估计的极其可扩展的方法,这些方法具有以下至少一个缺点:对记忆和计算方面的对不良,偏移成本高的极度敏感性,或差样本复杂性保证。据我们所知,Scaledgd是第一算法,它可以同时实现近最佳统计和计算复杂性,以便与Tucker分解进行低级张力完成。我们的算法突出了加速非耦合统计估计在加速非耦合统计估计中的适当预处理的功率,其中迭代改复的预处理器促进轨迹的所需的不变性属性相对于低级张量分解中的底层对称性。
translated by 谷歌翻译
Tensor robust principal component analysis (RPCA), which seeks to separate a low-rank tensor from its sparse corruptions, has been crucial in data science and machine learning where tensor structures are becoming more prevalent. While powerful, existing tensor RPCA algorithms can be difficult to use in practice, as their performance can be sensitive to the choice of additional hyperparameters, which are not straightforward to tune. In this paper, we describe a fast and simple self-supervised model for tensor RPCA using deep unfolding by only learning four hyperparameters. Despite its simplicity, our model expunges the need for ground truth labels while maintaining competitive or even greater performance compared to supervised deep unfolding. Furthermore, our model is capable of operating in extreme data-starved scenarios. We demonstrate these claims on a mix of synthetic data and real-world tasks, comparing performance against previously studied supervised deep unfolding methods and Bayesian optimization baselines.
translated by 谷歌翻译
本文研究了在存在重尾且可能是不对称噪声的情况下,低级矩阵的完成,我们旨在估计一组高度不完整的噪声条目,以估算一个基础的低级矩阵。尽管在过去的十年中,矩阵的完成问题吸引了很多关注,但是当观察结果被重尾噪音污染时,仍然缺乏理论上的理解。先前的理论缺乏解释经验结果,无法捕获估计误差对噪声水平的最佳依赖性。在本文中,我们采用自适应的Huber损失来容纳重尾噪声,当损失函数中的参数经过精心设计以平衡异常值的大偏差和稳健性时,这是对大型且可能不对称的误差的鲁棒性。然后,我们通过平衡的低级数burer-monteiro矩阵分解和梯度不错,并具有稳健的光谱初始化,提出了有效的非凸算法。我们证明,在仅在误差分布上的第二刻条件下,而不是次高斯的假设下,由提议的算法生成的迭代元素的欧几里得误差会快速减少几何,直到达到最小值 - 最佳统计估计误差,这具有相同的相同在次级案件中订购。这一重大进步背后的关键技术是一个强大的一对一分析框架。我们的模拟研究证实了理论结果。
translated by 谷歌翻译
This paper is about a curious phenomenon. Suppose we have a data matrix, which is the superposition of a low-rank component and a sparse component. Can we recover each component individually? We prove that under some suitable assumptions, it is possible to recover both the low-rank and the sparse components exactly by solving a very convenient convex program called Principal Component Pursuit; among all feasible decompositions, simply minimize a weighted combination of the nuclear norm and of the 1 norm. This suggests the possibility of a principled approach to robust principal component analysis since our methodology and results assert that one can recover the principal components of a data matrix even though a positive fraction of its entries are arbitrarily corrupted. This extends to the situation where a fraction of the entries are missing as well. We discuss an algorithm for solving this optimization problem, and present applications in the area of video surveillance, where our methodology allows for the detection of objects in a cluttered background, and in the area of face recognition, where it offers a principled way of removing shadows and specularities in images of faces.
translated by 谷歌翻译
最近以来,在理解与overparameterized模型非凸损失基于梯度的方法收敛性和泛化显著的理论进展。尽管如此,优化和推广,尤其是小的随机初始化的关键作用的许多方面都没有完全理解。在本文中,我们迈出玄机通过证明小的随机初始化这个角色的步骤,然后通过梯度下降的行为类似于流行谱方法的几个迭代。我们还表明,从小型随机初始化,这可证明是用于overparameterized车型更加突出这种隐含的光谱偏差,也使梯度下降迭代在一个特定的轨迹走向,不仅是全局最优的,但也很好期广义的解决方案。具体而言,我们专注于通过天然非凸制剂重构从几个测量值的低秩矩阵的问题。在该设置中,我们表明,从小的随机初始化的梯度下降迭代的轨迹可以近似分解为三个阶段:(Ⅰ)的光谱或对准阶段,其中,我们表明,该迭代具有一个隐含的光谱偏置类似于频谱初始化允许我们表明,在该阶段中进行迭代,并且下面的低秩矩阵的列空间被充分对准的端部,(II)一鞍回避/细化阶段,我们表明,该梯度的轨迹从迭代移动离开某些简并鞍点,和(III)的本地细化阶段,其中,我们表明,避免了鞍座后的迭代快速收敛到底层低秩矩阵。底层我们的分析是,可能有超出低等级的重建计算问题影响overparameterized非凸优化方案的分析见解。
translated by 谷歌翻译
Higher-order multiway data is ubiquitous in machine learning and statistics and often exhibits community-like structures, where each component (node) along each different mode has a community membership associated with it. In this paper we propose the tensor mixed-membership blockmodel, a generalization of the tensor blockmodel positing that memberships need not be discrete, but instead are convex combinations of latent communities. We establish the identifiability of our model and propose a computationally efficient estimation procedure based on the higher-order orthogonal iteration algorithm (HOOI) for tensor SVD composed with a simplex corner-finding algorithm. We then demonstrate the consistency of our estimation procedure by providing a per-node error bound, which showcases the effect of higher-order structures on estimation accuracy. To prove our consistency result, we develop the $\ell_{2,\infty}$ tensor perturbation bound for HOOI under independent, possibly heteroskedastic, subgaussian noise that may be of independent interest. Our analysis uses a novel leave-one-out construction for the iterates, and our bounds depend only on spectral properties of the underlying low-rank tensor under nearly optimal signal-to-noise ratio conditions such that tensor SVD is computationally feasible. Whereas other leave-one-out analyses typically focus on sequences constructed by analyzing the output of a given algorithm with a small part of the noise removed, our leave-one-out analysis constructions use both the previous iterates and the additional tensor structure to eliminate a potential additional source of error. Finally, we apply our methodology to real and simulated data, including applications to two flight datasets and a trade network dataset, demonstrating some effects not identifiable from the model with discrete community memberships.
translated by 谷歌翻译
kronecker回归是一个高度结构的最小二乘问题$ \ min _ {\ mathbf {x}}} \ lvert \ mathbf {k} \ mathbf {x} - \ mathbf {b} \ rvert_ \ rvert_ {2}^2 $矩阵$ \ mathbf {k} = \ mathbf {a}^{(1)} \ otimes \ cdots \ cdots \ otimes \ mathbf {a}^{(n)} $是因子矩阵的Kronecker产品。这种回归问题是在广泛使用的最小二乘(ALS)算法的每个步骤中都出现的,用于计算张量的塔克分解。我们介绍了第一个用于求解Kronecker回归的子次数算法,以避免在运行时间中避免指数项$ o(\ varepsilon^{ - n})$的$(1+ \ varepsilon)$。我们的技术结合了利用分数抽样和迭代方法。通过扩展我们对一个块是Kronecker产品的块设计矩阵的方法,我们还实现了(1)Kronecker Ridge回归的亚次级时间算法,并且(2)更新ALS中Tucker分解的因子矩阵,这不是一个不是一个纯Kronecker回归问题,从而改善了Tucker ALS的所有步骤的运行时间。我们证明了该Kronecker回归算法在合成数据和现实世界图像张量上的速度和准确性。
translated by 谷歌翻译
In this paper, we study the problem of a batch of linearly correlated image alignment, where the observed images are deformed by some unknown domain transformations, and corrupted by additive Gaussian noise and sparse noise simultaneously. By stacking these images as the frontal slices of a third-order tensor, we propose to utilize the tensor factorization method via transformed tensor-tensor product to explore the low-rankness of the underlying tensor, which is factorized into the product of two smaller tensors via transformed tensor-tensor product under any unitary transformation. The main advantage of transformed tensor-tensor product is that its computational complexity is lower compared with the existing literature based on transformed tensor nuclear norm. Moreover, the tensor $\ell_p$ $(0<p<1)$ norm is employed to characterize the sparsity of sparse noise and the tensor Frobenius norm is adopted to model additive Gaussian noise. A generalized Gauss-Newton algorithm is designed to solve the resulting model by linearizing the domain transformations and a proximal Gauss-Seidel algorithm is developed to solve the corresponding subproblem. Furthermore, the convergence of the proximal Gauss-Seidel algorithm is established, whose convergence rate is also analyzed based on the Kurdyka-$\L$ojasiewicz property. Extensive numerical experiments on real-world image datasets are carried out to demonstrate the superior performance of the proposed method as compared to several state-of-the-art methods in both accuracy and computational time.
translated by 谷歌翻译
近似消息传递(AMP)是解决高维统计问题的有效迭代范式。但是,当迭代次数超过$ o \ big(\ frac {\ log n} {\ log log \ log \ log n} \时big)$(带有$ n $问题维度)。为了解决这一不足,本文开发了一个非吸附框架,用于理解峰值矩阵估计中的AMP。基于AMP更新的新分解和可控的残差项,我们布置了一个分析配方,以表征在存在独立初始化的情况下AMP的有限样本行为,该过程被进一步概括以进行光谱初始化。作为提出的分析配方的两个具体后果:(i)求解$ \ mathbb {z} _2 $同步时,我们预测了频谱初始化AMP的行为,最高为$ o \ big(\ frac {n} {\ mathrm {\ mathrm { poly} \ log n} \ big)$迭代,表明该算法成功而无需随后的细化阶段(如最近由\ citet {celentano2021local}推测); (ii)我们表征了稀疏PCA中AMP的非反应性行为(在尖刺的Wigner模型中),以广泛的信噪比。
translated by 谷歌翻译
我们使用张量奇异值分解(T-SVD)代数框架提出了一种新的快速流算法,用于抵抗缺失的低管级张量的缺失条目。我们展示T-SVD是三阶张量的研究型块术语分解的专业化,我们在该模型下呈现了一种算法,可以跟踪从不完全流2-D数据的可自由子模块。所提出的算法使用来自子空间的基层歧管的增量梯度下降的原理,以解决线性复杂度和时间样本的恒定存储器的张量完成问题。我们为我们的算法提供了局部预期的线性收敛结果。我们的经验结果在精确态度上具有竞争力,但在计算时间内比实际应用上的最先进的张量完成算法更快,以在有限的采样下恢复时间化疗和MRI数据。
translated by 谷歌翻译
我们考虑估计与I.I.D的排名$ 1 $矩阵因素的问题。高斯,排名$ 1 $的测量值,这些测量值非线性转化和损坏。考虑到非线性的两种典型选择,我们研究了从随机初始化开始的此非convex优化问题的天然交流更新规则的收敛性能。我们通过得出确定性递归,即使在高维问题中也是准确的,我们显示出算法的样本分割版本的敏锐收敛保证。值得注意的是,虽然无限样本的种群更新是非信息性的,并提示单个步骤中的精确恢复,但算法 - 我们的确定性预测 - 从随机初始化中迅速地收敛。我们尖锐的非反应分析也暴露了此问题的其他几种细粒度,包括非线性和噪声水平如何影响收敛行为。从技术层面上讲,我们的结果可以通过证明我们的确定性递归可以通过我们的确定性顺序来预测我们的确定性序列,而当每次迭代都以$ n $观测来运行时,我们的确定性顺序可以通过$ n^{ - 1/2} $的波动。我们的技术利用了源自有关高维$ m $估计文献的遗留工具,并为通过随机数据的其他高维优化问题的随机初始化而彻底地分析了高阶迭代算法的途径。
translated by 谷歌翻译
我们的目标是在沿着张量模式的协变量信息存在中可获得稀疏和高度缺失的张量。我们的动机来自在线广告,在各种设备上的广告上的用户点击率(CTR)形成了大约96%缺失条目的CTR张量,并且在非缺失条目上有许多零,这使得独立的张量完井方法不满意。除了CTR张量旁边,额外的广告功能或用户特性通常可用。在本文中,我们提出了协助协助的稀疏张力完成(Costco),以合并复苏恢复稀疏张量的协变量信息。关键思想是共同提取来自张量和协变矩阵的潜伏组分以学习合成表示。从理论上讲,我们导出了恢复的张量组件的错误绑定,并明确地量化了由于协变量引起的显露概率条件和张量恢复精度的改进。最后,我们将Costco应用于由CTR张量和广告协变矩阵组成的广告数据集,从而通过基线的23%的准确性改进。重要的副产品是来自Costco的广告潜在组件显示有趣的广告集群,这对于更好的广告目标是有用的。
translated by 谷歌翻译
在本文中,我们提出{\ it \下划线{r} ecursive} {\ it \ usef \ undesline {i} mortance} {\ it \ it \ usew supsline {s} ketching} algorithM squares {\ it \下划线{o} ptimization}(risro)。 Risro的关键步骤是递归重要性草图,这是一个基于确定性设计的递归投影的新素描框架,它与文献中的随机素描\ Citep {Mahoney2011 randomized,Woodruff2014sketching}有很大不同。在这个新的素描框架下,可以重新解释文献中的几种现有算法,而Risro比它们具有明显的优势。 Risro易于实现,并在计算上有效,其中每次迭代中的核心过程是解决降低尺寸最小二乘问题的问题。我们在某些轻度条件下建立了Risro的局部二次线性和二次收敛速率。我们还发现了Risro与Riemannian Gauss-Newton算法在固定等级矩阵上的联系。在机器学习和统计数据中的两种应用中,RISRO的有效性得到了证明:低级别矩阵痕量回归和相位检索。仿真研究证明了Risro的出色数值性能。
translated by 谷歌翻译
我们开发了第一个快速频谱算法,用于分解$ \ mathbb {r}^d $排名到$ o的随机三阶张量。我们的算法仅涉及简单的线性代数操作,并且可以在当前矩阵乘法时间下在时间$ o(d^{6.05})$中恢复所有组件。在这项工作之前,只能通过方形的总和[MA,Shi,Steurer 2016]实现可比的保证。相反,快速算法[Hopkins,Schramm,Shi,Steurer 2016]只能分解排名最多的张量(D^{4/3}/\ text {polylog}(d))$。我们的算法结果取决于两种关键成分。将三阶张量的清洁提升到六阶张量,可以用张量网络的语言表示。将张量网络仔细分解为一系列矩形矩阵乘法,这使我们能够快速实现该算法。
translated by 谷歌翻译
We consider the nonlinear inverse problem of learning a transition operator $\mathbf{A}$ from partial observations at different times, in particular from sparse observations of entries of its powers $\mathbf{A},\mathbf{A}^2,\cdots,\mathbf{A}^{T}$. This Spatio-Temporal Transition Operator Recovery problem is motivated by the recent interest in learning time-varying graph signals that are driven by graph operators depending on the underlying graph topology. We address the nonlinearity of the problem by embedding it into a higher-dimensional space of suitable block-Hankel matrices, where it becomes a low-rank matrix completion problem, even if $\mathbf{A}$ is of full rank. For both a uniform and an adaptive random space-time sampling model, we quantify the recoverability of the transition operator via suitable measures of incoherence of these block-Hankel embedding matrices. For graph transition operators these measures of incoherence depend on the interplay between the dynamics and the graph topology. We develop a suitable non-convex iterative reweighted least squares (IRLS) algorithm, establish its quadratic local convergence, and show that, in optimal scenarios, no more than $\mathcal{O}(rn \log(nT))$ space-time samples are sufficient to ensure accurate recovery of a rank-$r$ operator $\mathbf{A}$ of size $n \times n$. This establishes that spatial samples can be substituted by a comparable number of space-time samples. We provide an efficient implementation of the proposed IRLS algorithm with space complexity of order $O(r n T)$ and per-iteration time complexity linear in $n$. Numerical experiments for transition operators based on several graph models confirm that the theoretical findings accurately track empirical phase transitions, and illustrate the applicability and scalability of the proposed algorithm.
translated by 谷歌翻译
特征向量扰动分析在各种数据科学应用中起着至关重要的作用。然而,大量的先前作品着重于建立$ \ ell_ {2} $ eigenVector扰动边界,这些范围通常在解决依赖特征向量的细粒度行为的任务方面非常不足。本文通过研究未知特征向量的线性函数的扰动来取得进展。在存在高斯噪声的情况下,着重于两个基本问题 - 矩阵denoising和主成分分析 - 我们开发了一个统计理论的套件,该理论表征了未知特征向量的任意线性函数的扰动。为了减轻自然``插件''估计器固有的不可忽略的偏见问题,我们开发了偏低的估计器,即(1)(1)为场景家庭实现最小的下限(模仿某些对数因素),并且(2)可以以数据驱动的方式计算,而无需样品分裂。值得注意的是,即使相关的特征间隙{\ em少于先前的统计理论所要求的,提出的估计器几乎是最佳的最佳选择。
translated by 谷歌翻译
社区检测和正交组同步是科学和工程中各种重要应用的基本问题。在这项工作中,我们考虑了社区检测和正交组同步的联合问题,旨在恢复社区并同时执行同步。为此,我们提出了一种简单的算法,该算法由频谱分解步骤组成,然后是彼此枢转的QR分解(CPQR)。所提出的算法与数据点数线性有效且缩放。我们还利用最近开发的“休闲一淘汰”技术来建立近乎最佳保证,以确切地恢复集群成员资格,并稳定地恢复正交变换。数值实验证明了我们算法的效率和功效,并确认了我们的理论表征。
translated by 谷歌翻译
我们考虑凸优化问题,这些问题被广泛用作低级基质恢复问题的凸松弛。特别是,在几个重要问题(例如相位检索和鲁棒PCA)中,在许多情况下的基本假设是最佳解决方案是排名一列。在本文中,我们考虑了目标上的简单自然的条件,以使这些放松的最佳解决方案确实是独特的,并且是一个排名。主要是,我们表明,在这种情况下,使用线路搜索的标准Frank-Wolfe方法(即,没有任何参数调整),该方法仅需要单个排名一级的SVD计算,可以找到$ \ epsilon $ - 仅在$ o(\ log {1/\ epsilon})$迭代(而不是以前最著名的$ o(1/\ epsilon)$)中的近似解决方案,尽管目的不是强烈凸。我们考虑了基本方法的几种变体,具有改善的复杂性,以及由强大的PCA促进的扩展,最后是对非平滑问题的扩展。
translated by 谷歌翻译
In this paper, we consider the estimation of a low Tucker rank tensor from a number of noisy linear measurements. The general problem covers many specific examples arising from applications, including tensor regression, tensor completion, and tensor PCA/SVD. We consider an efficient Riemannian Gauss-Newton (RGN) method for low Tucker rank tensor estimation. Different from the generic (super)linear convergence guarantee of RGN in the literature, we prove the first local quadratic convergence guarantee of RGN for low-rank tensor estimation in the noisy setting under some regularity conditions and provide the corresponding estimation error upper bounds. A deterministic estimation error lower bound, which matches the upper bound, is provided that demonstrates the statistical optimality of RGN. The merit of RGN is illustrated through two machine learning applications: tensor regression and tensor SVD. Finally, we provide the simulation results to corroborate our theoretical findings.
translated by 谷歌翻译