希尔伯特空间

Ryan Corning
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引用次数: 57

摘要

我们前面的讨论都与代数有关。用抽象符号表示系统(量及其相互关系)迫使我们提炼出这些系统最重要、最基本的特性。对于线性系统,我们能够进行更深入的探索,在大多数情况下,我们将系统模型分解为非耦合标量方程组。现在,我们的注意力转向长度和角度的几何概念。这些概念是测量和比较向量的基础,它们完成了一般向量空间与我们所熟悉的物理三维空间之间的类比。因此,我们对物体大小和形状的直觉为我们提供了宝贵的启示。长度的定义为我们之前关于无限向量序列作为无限维空间基础的启发式讨论赋予了严格的意义。长度也是应用最广泛的优化标准之一。我们将在第 6 章中探讨长度概念的应用。通过正交性(或角度)的定义,我们可以进一步讨论系统分解。到此为止,确定一个向量相对于特定基的坐标需要求解一组同步方程。有了正交基,每个坐标都可以独立求得,这在概念上以及某些情况下在计算上都要简单得多。
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Hilbert Spaces
Our previous discussions have been concerned with algebra. The representation of systems (quantities and their interrelations) by abstract symbols has forced us to distill out the most significant and fundamental properties of these systems. We have been able to carry our exploration much deeper for linear systems, in most cases decomposing the system models into sets of uncoupled scalar equations. Our attention now turns to the geometric notions of length and angle. These concepts, which are fundamental to measurement and comparison of vectors, complete the analogy between general vector spaces and the physical three-dimensional space with which we are familiar. Then our intuition concerning the size and shape of objects provides us with valuable insight. The definition of length gives rigorous meaning to our previous heuristic discussions of an infinite sequence of vectors as a basis for an infinite-dimensional space. Length is also one of the most widely used optimization criteria. We explore this application of the concept of length in Chapter 6. The definition of orthogonality (or angle) allows us to carry even further our discussion of system decomposition. To this point, determination of the coordinates of a vector relative to a particular basis has required solution of a set of simultaneous equations. With orthogonal bases, each coordinate can be obtained independently, a much simpler process conceptually and, in some instances, computationally.
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