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Penalized partially linear models using sparse representations with an application to fMRI time series

机译:使用稀疏表示的惩罚性部分线性模型及其在fMRI时间序列中的应用

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摘要

In this paper, we consider modeling the nonparametric component in partially linear models (PLMs) using linear sparse representations, e.g., wavelet expansions. Two types of representations are investigated, namely, orthogonal bases (complete) and redundant overcomplete expansions. For bases, we introduce a regularized estimator of the nonparametric part. The important contribution here is that the nonparametric part can be parsimoniously estimated by choosing an appropriate penalty function for which the hard and soft thresholding estimators are special cases. This allows us to represent in an effective manner a broad class of signals, including stationary and/or nonstationary signals and avoids excessive bias in estimating the parametric component. We also give a fast estimation algorithm. The method is then generalized to handle the case of overcomplete representations. A large-scale simulation study is conducted to illustrate the finite sample properties of the estimator. The estimator is finally applied to real neurophysiological functional magnetic resonance imaging (MRI) data sets that are suspected to contain both smooth and transient drift features.
机译:在本文中,我们考虑使用线性稀疏表示(例如小波展开)对部分线性模型(PLM)中的非参数分量进行建模。研究了两种类型的表示形式,即正交基(完全)和冗余的超完全展开。对于基数,我们引入非参数部分的正则估计量。这里的重要贡献在于,可以通过选择适当的惩罚函数来同时估计非参数部分,对于该惩罚函数,硬阈值估计器和软阈值估计器是特殊情况。这使我们能够以有效的方式表示广泛的信号类别,包括固定和/或非固定信号,并避免在估计参数分量时产生过多的偏差。我们还给出了一种快速估计算法。然后,将该方法推广到处理不完整表示的情况。进行了大规模的仿真研究,以说明估计器的有限样本属性。该估计器最终应用于怀疑包含平滑和瞬态漂移特征的真实神经生理功能磁共振成像(MRI)数据集。

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