【2h】

Localized bases of eigensubspaces and operator compression

机译:本征子空间的局部基础和算子压缩

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摘要

Given a complex local operator, such as the generator of a Markov chain on a large network, a differential operator, or a large sparse matrix that comes from the discretization of a differential operator, we would like to find its best finite dimensional approximation with a given dimension. The answer to this question is often given simply by the projection of the original operator to its eigensubspace of the given dimension that corresponds to the smallest or largest eigenvalues, depending on the setting. The representation of such subspaces, however, is far from being unique and our interest is to find the most localized bases for these subspaces. The reduced operator using these bases would have sparsity features similar to that of the original operator. We will discuss different ways of obtaining localized bases, and we will give an explicit characterization of the decay rate of these basis functions. We will also discuss efficient numerical algorithms for finding such basis functions and the reduced (or compressed) operator.
机译:给定复杂的局部算子,例如大型网络上的马尔可夫链的生成器,微分算子或源自微分算子离散化的大型稀疏矩阵,我们希望找到一个最佳的有限维近似,其中给定尺寸。这个问题的答案通常是简单地通过将原始算子投影到其给定维数的本征子空间来投影的,该子空间对应于最小或最大特征值,具体取决于设置。但是,此类子空间的表示方式远非唯一,我们的兴趣是为这些子空间找到最本地化的基础。使用这些基础的精简运算符将具有与原始运算符相似的稀疏特征。我们将讨论获得局部基数的不同方法,并且将对这些基函数的衰减率进行明确描述。我们还将讨论用于找到此类基函数和简化(或压缩)算符的有效数值算法。

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