Department of Mathematics, Statistics and Computer Science, Marquette University, Milwaukee, Wisconsin.
Center for Precision Medicine Research, Marshfield Clinic Research Institute, Marshfield, Wisconsin.
Stat Med. 2018 Dec 30;37(30):4789-4806. doi: 10.1002/sim.7972. Epub 2018 Sep 26.
In this paper, we develop a method for the simultaneous estimation of spectral density functions (SDFs) for a collection of stationary time series that share some common features. Due to the similarities among the SDFs, the log-SDF can be represented using a common set of basis functions. The basis shared by the collection of the log-SDFs is estimated as a low-dimensional manifold of a large space spanned by a prespecified rich basis. A collective estimation approach pools information and borrows strength across the SDFs to achieve better estimation efficiency. Moreover, each estimated spectral density has a concise representation using the coefficients of the basis expansion, and these coefficients can be used for visualization, clustering, and classification purposes. The Whittle pseudo-maximum likelihood approach is used to fit the model and an alternating blockwise Newton-type algorithm is developed for the computation. A web-based shiny App found at "https://ncsde.shinyapps.io/NCSDE" is developed for visualization, training, and learning the SDFs collectively using the proposed technique. Finally, we apply our method to cluster similar brain signals recorded by the for identifying synchronized brain regions according to their spectral densities.
在本文中,我们开发了一种方法,用于同时估计具有某些共同特征的一组固定时间序列的谱密度函数(SDF)。由于 SDF 之间的相似性,可以使用一组共同的基函数表示对数 SDF。通过对预先指定的丰富基函数所张成的大空间中的低维流形来估计共享的基。集合估计方法通过汇集信息和跨 SDF 借用强度来实现更好的估计效率。此外,每个估计的谱密度都使用基扩展的系数表示,并且可以使用这些系数进行可视化、聚类和分类。采用 Whittle 伪最大似然方法来拟合模型,并开发了交替分块牛顿型算法进行计算。我们开发了一个基于网络的 shiny App,网址为 "https://ncsde.shinyapps.io/NCSDE",用于使用所提出的技术进行可视化、训练和集体学习 SDF。最后,我们将该方法应用于聚类类似的大脑信号,根据其谱密度识别同步的大脑区域。