Infinite Vector Decomposition in Tridiagonal Matrix Enhanced Multivariance Products Representation (TMEMPR) Perspective

N. A. Baykara, M. Demiralp
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引用次数: 4

Abstract

In this work a new version of Enhanced Multivariance Products Representation (EMPR) is taken into consideration. Recent researches on the bivariate arrays (i.e., Matrices) have led us to a new scheme which we have called Tridiagonal Matrix Enhanced Multivariate Products Representation (TMEMPR). Therein we have been consecutively using four term EMPR on its bivariate component under different support functions such that the remainder was becoming to have less rank as we proceed until no bivariate component remains. Here however, we focus on denumerably infinite vectors and first appropriately fold them to semi infinite matrices with finite number of denumerable infinite rows, then decompose the resulting infinite matrices via TMEMPR, and at the final stage we unfold each additive term of the representation via unique inversion of the folding procedure we use.
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基于三对角矩阵增强多方差积表示(TMEMPR)的无限向量分解
在这项工作中,考虑了一个新版本的增强多方差产品表示(EMPR)。最近对二元数组(即矩阵)的研究使我们提出了一种新的方案,我们称之为三对角矩阵增强多元乘积表示(TMEMPR)。其中,我们在不同的支持函数下对其二元分量连续使用四项EMPR,这样,随着我们继续进行,剩余的分量变得越来越少,直到没有二元分量剩下。然而,在这里,我们专注于不可数无限向量,首先适当地将它们折叠成具有有限数量的可数无限行的半无限矩阵,然后通过TMEMPR分解得到的无限矩阵,在最后阶段,我们通过我们使用的折叠过程的唯一反转展开表示的每个可加项。
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