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Demixing multivariate-operator self-similar processes

机译:脱吊多元算子自我类似过程

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Operator self-similarity naturally extends the concepts of univariate self-similarity and scale invariance to multivariate data. Beyond a vector of Hurst parameters, operator self-similarity models also involve a mixing matrix. The present contribution aims at estimating the collection of Hurst parameters in the case where the mixing matrix is not diagonal. To the best of our knowledge, this has never been achieved. In addition, the mixing matrix is also identified. The devised procedure relies on a source separation methodology, since the underlying components of the operator self-similar process are assumed to have a diagonal pre-mixing covariance structure. The principle behind the demixing procedure is illustrated based on synthetic 4-variate operator self-similar processes, with a priori prescribed and controlled Hurst parameters and mixing matrix. Identification and estimation performance for both Hurst parameters and mixing matrices are shown to be very satisfactory, using large size Monte Carlo simulations.
机译:操作员自我相似性自然地扩展了单变量自相似性和缩放不变性的概念与多变量数据。除了赫斯特参数的向量之外,操作员自我相似性模型还涉及混合矩阵。本贡献旨在估计混合矩阵不是对角线的情况下的HUST参数的集合。据我们所知,这从未实现过。此外,还鉴定了混合基质。设计程序依赖于源分离方法,因为假设操作员自相似过程的基础组件具有对角预混合协方差结构。脱模过程背后的原理是基于合成的4变化操作员自我类似过程的,先验规定的并控制赫斯特参数和混合矩阵。两个赫斯特参数和混合矩阵识别和估计性能被示为非常令人满意的,使用大尺寸的蒙特卡洛模拟。

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