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Theoretical limits of component identification in a separable nonlinear least-squares problem

机译:可分离的非线性最小二乘问题中成分识别的理论极限

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We provide theoretical insights into component identification in a separable nonlinear least-squares problem in which the model is a linear combination of nonlinear functions (called components in this paper). Within this research, we assume that the number of components is unknown. The objective of this paper is to understand the limits of component discovery under the assumed model. We focus on two aspects. One is sensitivity analysis referring to the ability of separating regression components from noise. The second is resolution analysis referring to the ability of de-mixing components that have similar location parameters. We use a wavelet transformation that allows to zoom in at different levels of details in the observed data. We further apply these theoretical insights to provide a road map on how to detect components in more realistic settings such as a two-dimensional nuclear magnetic resonance experiment for protein structure determination.
机译:我们提供可分离非线性最小二乘问题中组件识别的理论见解,其中模型是非线性函数的线性组合(在本文中称为组件)。在这项研究中,我们假设组件的数量未知。本文的目的是了解假设模型下组件发现的局限性。我们专注于两个方面。一种是灵敏度分析,指的是将回归分量与噪声分离的能力。第二个是分辨率分析,是指对具有相似位置参数的组件进行混合的能力。我们使用小波变换,可以放大观察数据中不同级别的细节。我们进一步运用这些理论见解,为如何在更现实的环境中检测成分提供了路线图,例如用于蛋白质结构确定的二维核磁共振实验。

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