论文标题
关于线性反问题的模棱两可:进入几乎数据符合解决方案和进入条件编号的界限
On Ambiguity in Linear Inverse Problems: Entrywise Bounds on Nearly Data-Consistent Solutions and Entrywise Condition Numbers
论文作者
论文摘要
在各种信号处理应用中,不良的线性逆问题经常出现。具有理论特征来量化给定反问题的不良程度以及其解决方案可能存在的歧义程度,这是非常有用的。传统的不良性措施(例如矩阵的状况数量)提供了本质上具有全球性的特征。尽管这种特征可以很强大,但它们也可能无法提供有关解决方案向量的某些条目或多或少含糊不清的情况。在这项工作中,我们得出了适用于溶液向量各个条目的新型理论下限和上限,并且对几乎数据吻合的所有潜在溶液向量都是有效的。这些边界对噪声统计数据和解决反问题的特定方法不可知,也被证明是紧密的。此外,我们的结果还导致我们引入了传统状况编号的入门版本,该版本提供了对方案矢量某些元素对扰动的敏感的方案的细微差别表征。我们的结果在应用于磁共振成像重建的应用中进行了说明,我们包括讨论有关大规模逆问题的实际计算方法,我们的新理论与在统计建模假设下绑定的传统Cramér-Rao之间的联系,以及涉及涉及数据相关性超出数据相关的案例的案例的潜在扩展。
Ill-posed linear inverse problems appear frequently in various signal processing applications. It can be very useful to have theoretical characterizations that quantify the level of ill-posedness for a given inverse problem and the degree of ambiguity that may exist about its solution. Traditional measures of ill-posedness, such as the condition number of a matrix, provide characterizations that are global in nature. While such characterizations can be powerful, they can also fail to provide full insight into situations where certain entries of the solution vector are more or less ambiguous than others. In this work, we derive novel theoretical lower- and upper-bounds that apply to individual entries of the solution vector, and are valid for all potential solution vectors that are nearly data-consistent. These bounds are agnostic to the noise statistics and the specific method used to solve the inverse problem, and are also shown to be tight. In addition, our results also lead us to introduce an entrywise version of the traditional condition number, which provides a substantially more nuanced characterization of scenarios where certain elements of the solution vector are less sensitive to perturbations than others. Our results are illustrated in an application to magnetic resonance imaging reconstruction, and we include discussions of practical computation methods for large-scale inverse problems, connections between our new theory and the traditional Cramér-Rao bound under statistical modeling assumptions, and potential extensions to cases involving constraints beyond just data-consistency.