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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Efficient Bayesian hierarchical functional data analysis with basis function approximations using Gaussian-Wishart processes
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Efficient Bayesian hierarchical functional data analysis with basis function approximations using Gaussian-Wishart processes

机译:高效贝叶斯分层功能数据分析,基于高斯 - 福利进程的基础函数近似

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摘要

Functional data are defined as realizations of random functions (mostly smooth functions) varying over a continuum, which are usually collected on discretized grids with measurement errors. In order to accurately smooth noisy functional observations and deal with the issue of high-dimensional observation grids, we propose a novel Bayesian method based on the Bayesian hierarchical model with a Gaussian-Wishart process prior and basis function representations. We first derive an induced model for the basis-function coefficients of the functional data, and then use this model to conduct posterior inference through Markov chain Monte Carlo methods. Compared to the standard Bayesian inference that suffers serious computational burden and instability in analyzing high-dimensional functional data, our method greatly improves the computational scalability and stability, while inheriting the advantage of simultaneously smoothing raw observations and estimating the mean-covariance functions in a nonparametric way. In addition, our method can naturally handle functional data observed on random or uncommon grids. Simulation and real studies demonstrate that our method produces similar results to those obtainable by the standard Bayesian inference with low-dimensional common grids, while efficiently smoothing and estimating functional data with random and high-dimensional observation grids when the standard Bayesian inference fails. In conclusion, our method can efficiently smooth and estimate high-dimensional functional data, providing one way to resolve the curse of dimensionality for Bayesian functional data analysis with Gaussian-Wishart processes.
机译:功能数据被定义为随机函数(大多是平滑函数)的实现,其在连续体上变化,通常在具有测量误差的离散网格上收集。为了准确地平稳嘈杂的功能观测和处理高维观察网格的问题,我们提出了一种基于贝叶斯分层模型的新型贝叶斯方法,具有高斯 - 愿望进程的先前和基础函数表示。我们首先导出了功能数据的基本功能系数的诱导模型,然后使用该模型通过马尔可夫链蒙特卡罗方法进行后部推理。与标准贝叶斯推理的标准贝叶斯推理相比,在分析高维功能数据时遭受严重的计算负担和不稳定,我们的方法大大提高了计算可扩展性和稳定性,同时继承了同时平滑原始观察和估计非参数中的平均协方差函数的优势道路。此外,我们的方法可以自然地处理随机或罕见网格上观察到的功能数据。仿真和实际研究表明,我们的方法与标准贝叶斯推断可获得的低维通用网格的方法类似的结果,同时在标准贝叶斯推理失败时有效地平滑和估计具有随机和高维观察网格的功能数据。总之,我们的方法可以有效地平稳且估计高维功能数据,提供一种解决与高斯愿望流程的贝叶斯功能数据分析维数维度的一种方法。

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