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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Convergence Rates for Learning Linear Operators from Noisy Data
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Convergence Rates for Learning Linear Operators from Noisy Data

机译:从噪声数据中学习线性算子的收敛率

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This paper studies the learning of linear operators between infinite-dimensional Hilbert spaces. The training data comprises pairs of random input vectors in a Hilbert space and their noisy images under an unknown self-adjoint linear operator. Assuming that the operator is diagonalizable in a known basis, this work solves the equivalent inverse problem of estimating the operator's eigenvalues given the data. Adopting a Bayesian approach, the theoretical analysis establishes posterior contraction rates in the infinite data limit with Gaussian priors that are not directly linked to the forward map of the inverse problem. The main results also include learning-theoretic generalization error guarantees for a wide range of distribution shifts. These convergence rates quantify the effects of data smoothness and true eigenvalue decay or growth, for compact or unbounded operators, respectively, on sample complexity. Numerical evidence supports the theory in diagonal and nondiagonal settings.
机译:本文研究线性的学习运营商之间的无限维的希尔伯特空间。希尔伯特空间及其随机输入向量嘈杂的图像在一个未知的自伴的线性的操作符。对角化的在一个已知的基础上,这项工作解决估计的等价的反问题算子的特征值数据。贝叶斯方法,理论分析建立后萎缩率无限的数据与高斯先验限制没有直接链接到的地图逆问题。learning-theoretic泛化误差担保范围广泛的分布转变。数据平滑和真正的特征值的影响衰退或增长,紧凑或无限运营商,分别对样品的复杂性。数字证据支持理论对角线和nondiagonal设置。

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