To capture the slowly time-varying spectral content of real-world time-series, a common paradigm is to partition the data into approximately stationary intervals and perform inference in the time-frequency domain. However, this approach lacks a corresponding nonstationary time-domain generative model for the entire data and thus, time-domain inference occurs in each interval separately. This results in distortion/discontinuity around interval boundaries and can consequently lead to erroneous inferences based on any quantities derived from the posterior, such as the phase. To address these shortcomings, we propose the Piecewise Locally Stationary Oscillation (PLSO) model for decomposing time-series data with slowly time-varying spectra into several oscillatory, piecewise-stationary processes. PLSO, as a nonstationary time-domain generative model, enables inference on the entire time-series without boundary effects and simultaneously provides a characterization of its time-varying spectral properties. We also propose a novel two-stage inference algorithm that combines Kalman theory and an accelerated proximal gradient algorithm. We demonstrate these points through experiments on simulated data and real neural data from the rat and the human brain.
翻译:为了捕捉现实世界时间序列中缓慢时间变化的光谱内容,一个共同的范式是将数据分成大约固定间隔,并在时间-频率域中进行推断;然而,这一方法缺乏对整个数据相应的非静止时间-表面基因模型,因此,每个间隔间分别发生时间-表面推断。这导致间界周围的扭曲/不连续,从而可能导致根据从远地点(例如阶段)得到的任何数量得出的错误推断。为了解决这些缺陷,我们提议了小巧的局部静止观察(PLSO)模型,用于将具有缓慢时间变化光谱的时序数据分解成若干振动、片度-静止过程。PLSO,作为非静止时间-时间-表面基因模型,可以对整个时间序列进行推断,而不产生边界影响,同时提供对其时间变化的光谱特性的定性。我们还提议了一种新型的两阶段推论算法,将Kalman理论和加速的纳氏质级模型数据与加速的人类大脑变压法结合起来。