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首页> 外文期刊>Journal of inverse and ill-posed problems >Bayesian posterior contraction rates for linear severely ill-posed inverse problems
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Bayesian posterior contraction rates for linear severely ill-posed inverse problems

机译:线性严重不适定逆问题的贝叶斯后收缩率

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We consider a class of linear ill-posed inverse problems arising from inversion of a compact operator with singular values which decay exponentially to zero. We adopt a Bayesian approach, assuming a Gaussian prior on the unknown function. The observational noise is assumed to be Gaussian; as a consequence the prior is conjugate to the likelihood so that the posterior distribution is also Gaussian. We study Bayesian posterior consistency in the small observational noise limit. We assume that the forward operator and the prior and noise covariance operators commute with one another. We show how, for given smoothness assumptions on the truth, the scale parameter of the prior, which is a constant multiplier of the prior covariance operator, can be adjusted to optimize the rate of posterior contraction to the truth, and we explicitly compute the logarithmic rate.
机译:我们考虑一类线性不适定逆问题,该问题是由具有奇异值的紧凑算子的反演引起的,该奇异值呈指数衰减至零。我们采用贝叶斯方法,假设未知函数为高斯先验。假定观测噪声为高斯噪声;结果,先验与似然共轭,因此后验分布也是高斯分布。我们在较小的观察噪声极限下研究贝叶斯后验一致性。我们假设前向运算符与先验和噪声协方差运算符相互通勤。我们展示了在给定平滑度的前提下,如何调整先验的尺度参数(即先验协方差算子的常数乘数),以优化对真理的后收缩率,并明确计算对数率。

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