This article first introduces the notion of weighted singular value decomposition (WSVD) of a tensor via the Einstein product. The WSVD is then used to compute the weighted Moore-Penrose inverse of an arbitrary-order tensor. We then define the notions of weighted normal tensor for an even-order square tensor and weighted tensor norm. Finally, we apply these to study the theory of numerical range for the weighted Moore-Penrose inverse of an even-order square tensor and exploit its several properties. We also obtain a few new results in the matrix setting that generalizes some of the existing results as particular cases.
翻译:本条首先引入了通过爱因斯坦产品对电压进行加权单值分解(WSVD)的概念,然后用WSVD来进行加权摩尔-彭罗斯值反任意顺序的计算。然后我们定义了对等平级平方数的加权常价分解(WSVD)的概念。最后,我们运用这些来研究加权摩尔-彭罗斯值反均序方格分解(WSVD)的数字范围理论,并开发其若干特性。我们还在矩阵设置中取得了一些新结果,将某些现有结果作为特定案例加以概括。