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Aggregated wavelet estimation and its application to ultra-fast fMRI

机译:聚合小波估计及其在超快速fMRI中的应用

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The methodology of aggregation of known nonparametric regression estimators into a single better estimator has received increasing attention in statistical literature. Traditional aggregation means that a linear or convex combination of several estimators is considered. Wavelet regression estimation, due to its mul-tiresolution nature, presents another opportunity for aggregation - using different estimation procedures on different resolution scales. Such an opportunity becomes attractive if known wavelet estimators have desired complementary properties on different frequencies. The difficulty of such an aggregation is that the assignment of scales depends on an underlying regression function and regression errors. This paper proposes a data-driven aggregation of two wavelet estimators - SureBIock of Cai and Zhou [(2009), 'A Data-driven Block Thresholding Approach to Wavelet Estimation', Annals of Statistics, 37, 569-595] and Universal of Efromovich [(1999a,b), Nonparametric Curve Estimation: Methods, Theory and Applications, New York: Springer; 'Quasi-linear Wavelet Estimation', Journal of the American Statistical Association, 94, 189-204] - to achieve a better quality of estimation, better data-compression, and better visualisation of functions with different smoothness characteristics on low and high frequencies. The proposed estimator is motivated by an applied problem of denoising and compression of ultra-fast (UF) functional magnetic resonance imaging (fMRI) -the new magnetic resonance technology that screens the activity of brain voxels every 50 ms with the purpose of understanding human brain activity. The proposed aggregated wavelet estimator is supported by the asymptotic theory, tested via intensive numerical simulations and UF fMRI applications, and it is expected to be useful in similar applications.
机译:在统计文献中,将已知的非参数回归估计量聚合为一个更好的估计量的方法越来越受到关注。传统的聚合意味着要考虑多个估计量的线性或凸组合。小波回归估计由于其多分辨率性质,为聚合提供了另一个机会-在不同分辨率尺度上使用不同的估计程序。如果已知的小波估计器在不同频率上具有所需的互补性质,则这种机会就变得有吸引力。这种聚合的困难在于,标度的分配取决于潜在的回归函数和回归误差。本文提出了两个小波估计量的数据驱动聚合-Cai和Zhou的SureBIock [(2009),“小波估计的数据驱动块阈值方法”,《统计年鉴》 37,569-595]和Efromovich的通用[(1999a,b),非参数曲线估计:方法,理论和应用,纽约:施普林格; “准线性小波估计”,《美国统计协会杂志》,第94卷,第189-204页),以实现更好的估计质量,更好的数据压缩以及对低频和高频下具有不同平滑特性的函数的更好可视化。拟议的估算器受到超快速(UF)功能磁共振成像(fMRI)的降噪和压缩应用问题的启发-一种新的磁共振技术,该技术每50 ms筛选一次大脑体素的活动,目的是了解人的大脑活动。所提出的聚合小波估计器由渐近理论支持,通过深入的数值模拟和UF fMRI应用进行了测试,并且有望在类似应用中使用。

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