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LARGE-SCALE SPARSE INVERSE COVARIANCE MATRIX ESTIMATION

机译:大规模稀疏逆协方差矩阵估计

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摘要

The estimation of large sparse inverse covariance matrices is a ubiquitous statistical problem in many application areas such as mathematical finance, geology, health, and many others. The Li-regularized Gaussian maximum likelihood (ML) method is a common approach for recovering inverse covariance matrices for datasets with a very limited number of samples. A highly efficient ML-based method is the quadratic approximate inverse covariance (QUIC) method. In this work, we build on the advancements of QUIC algorithm by introducing a highly performant sparse version of QUIC (SQUIC) for large-scale applications. The proposed algorithm focuses on exploiting the potential sparsity in three components of the QUIC algorithm, namely, construction sample covariance matrix, matrix factorization, and matrix inversion operations. For each component, we present two approaches and provide supporting numerical results based on a set of synthetic datasets and a stylized financial autoregressive model. Testing conducted on a single modern multicore machine show that using advanced sparse matrix technology, SQUIC can recover large-scale inverse covariance matrices of datasets with up to 1 million random variables within minutes. In comparison to competing ML-based algorithms, SQUIC is orders of magnitude faster with comparable recovery rates.
机译:大稀疏反相变协方差矩阵的估计是许多应用领域的普遍存在统计问题,例如数学金融,地质学,健康和许多其他地区。锂正则化高斯最大似然(ML)方法是用于恢复具有非常有限数量的样本的数据集的逆协方差矩阵的常见方法。一种高效的ML基方法是二次近似逆协方差(QUIC)方法。在这项工作中,我们通过为大型应用引入高度性能的稀疏版本(SQUIC)来构建Quic算法的进步。所提出的算法侧重于利用判断算法的三个组件的潜在稀疏性,即施工样本协方差矩阵,矩阵分解和矩阵反转操作。对于每个组件,我们提出了两种方法,并根据一组合成数据集和风格化的金融自回归模型提供支持的数值结果。在一个现代多核机器上进行的测试表明,使用先进的稀疏矩阵技术,Squic可以在几分钟内恢复数据集的大规模逆协方差矩阵,在几分钟内在最多100万随机变量。与竞争基于ML的算法相比,Squic是具有可比性恢复速率的速度更快的数量级。

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