Lahoche Vincent, Ousmane Samary Dine, Tamaazousti Mohamed
Université Paris-Saclay, CEA, List, F-91120 Palaiseau, France.
International Chair in Mathematical Physics and Applications (ICMPA-UNESCO Chair), University of Abomey-Calavi, Cotonou 072 P.O. Box 50, Benin.
Entropy (Basel). 2021 Aug 31;23(9):1132. doi: 10.3390/e23091132.
Renormalization group techniques are widely used in modern physics to describe the relevant low energy aspects of systems involving a large number of degrees of freedom. Those techniques are thus expected to be a powerful tool to address open issues in data analysis when datasets are highly correlated. Signal detection and recognition for a covariance matrix having a nearly continuous spectra is currently one of these opened issues. First, investigations in this direction have been proposed in recent investigations from an analogy between coarse-graining and principal component analysis (PCA), regarding separation of sampling noise modes as a UV cut-off for small eigenvalues of the covariance matrix. The field theoretical framework proposed in this paper is a synthesis of these complementary point of views, aiming to be a general and operational framework, both for theoretical investigations and for experimental detection. Our investigations focus on signal detection. They exhibit numerical investigations in favor of a connection between symmetry breaking and the existence of an intrinsic detection threshold.
重整化群技术在现代物理学中被广泛应用,以描述涉及大量自由度的系统的相关低能方面。因此,当数据集高度相关时,这些技术有望成为解决数据分析中未解决问题的有力工具。对于具有近乎连续谱的协方差矩阵的信号检测和识别是当前这些未解决问题之一。首先,最近的研究从粗粒化和主成分分析(PCA)之间的类比出发,提出了朝这个方向的研究,即将采样噪声模式的分离视为协方差矩阵小特征值的紫外截止。本文提出的场论框架是这些互补观点的综合,旨在成为一个通用且可操作的框架,用于理论研究和实验检测。我们的研究集中在信号检测上。它们展示了数值研究,支持对称性破缺与内在检测阈值的存在之间的联系。