Nonstationary time series data exist in various scientific disciplines, including environmental science, biology, signal processing, econometrics, among others. Many Bayesian models have been developed to handle nonstationary time series. The time-varying vector autoregressive (TV-VAR) model is a well-established model for multivariate nonstationary time series. Nevertheless, in most cases, the large number of parameters presented by the model results in a high computational burden, ultimately limiting its usage. This paper proposes a computationally efficient multivariate Bayesian Circular Lattice Filter to extend the usage of the TV-VAR model to a broader class of high-dimensional problems. Our fully Bayesian framework allows both the autoregressive (AR) coefficients and innovation covariance to vary over time. Our estimation method is based on the Bayesian lattice filter (BLF), which is extremely computationally efficient and stable in univariate cases. To illustrate the effectiveness of our approach, we conduct a comprehensive comparison with other competing methods through simulation studies and find that, in most cases, our approach performs superior in terms of average squared error between the estimated and true time-varying spectral density. Finally, we demonstrate our methodology through applications to quarterly Gross Domestic Product (GDP) data and Northern California wind data.
翻译:各种科学学科,包括环境科学、生物学、信号处理、信号处理、计量经济学等,都存在非静止时间序列数据。许多巴伊西亚模型已经开发出来,以处理非静止时间序列。时间变化矢量自动递减模型(TV-VAR)是多变非静止时间序列的既定模型。不过,在大多数情况下,模型提出的大量参数导致计算负担过重,最终限制了其使用。本文件建议采用一种计算效率高的多变贝伊西亚通知拉蒂过滤器,将电视VAR模型的使用扩大到更广泛的高维度问题类别。我们完全的巴伊西亚框架允许自动递减系数和创新共变模式随时间变化。我们的估算方法以巴伊西亚拉蒂斯过滤器(BLF)为基础,该模型的结果在计算上极为高效和稳定,最终限制了其使用。为了说明我们的方法的有效性,我们通过模拟研究与其他竞合方法进行了全面比较,发现在大多数情况下,我们采用的方法在平均时程数据中优于我们所估计的州里程数据。