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Dong Yan1, Shota Gugushvili2, Aad van der Vaart1

  • 1DIAM, TU Delft, Mekelweg 4, Delft, 2628 CD Netherlands.

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概括
此摘要是机器生成的。

我们通过使用离散观测来推导反向问题的后面分布的收缩率. 这些比率取决于先前的度和近似质量,使各种先验能够实现近乎最佳的恢复.

关键词:
适应性估计是适应性的估计.固定设计 固定设计盖勒金 (Galerkin) 在这里工作.高斯的前期是高斯的前期.希尔伯特尺度是一个希尔伯特尺度.插值 插值 插值 插值 插值 插值线性反向问题 线性反向问题非参数的贝叶斯估计.后续收缩率的下降速度随机序列之前的随机序列.回归是一种回归.规则性规模的规则性规模.

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科学领域:

  • 贝叶斯的推理 贝叶斯的推理
  • 反向问题是反向的问题.
  • 统计学学习理论 统计学学习理论

背景情况:

  • 后分布量化了反向问题的不确定性.
  • 了解收缩率对于可靠的估计至关重要.
  • 对于各种先行选择,需要使用通用方法.

研究的目的:

  • 导出后部分布的抽象收缩率.
  • 分析先前属性的对估计准确性的影响.
  • 在反向问题中评估特定先前类型的性能.

主要方法:

  • 为一般的先验发展抽象的理论结果.
  • 根据离散的加勒金近似分析收缩速度.
  • 调查先前的度和近似性质.

主要成果:

  • 收缩率是通过离散近似质量来确定的.
  • 在真正的溶液附近的先前度是关键.
  • 非结合序列,高斯式和混合先验实现了近乎最佳的适应性恢复.

结论:

  • 由此得出的抽象结果为分析后部收缩率提供了一个一般框架.
  • 特定的先前选择,如高斯混合物,表现出强的性能.
  • 这些发现有助于我们更好地理解贝叶斯推理在反向问题中的作用.