Regime shifts in high-dimensional time series arise naturally in many applications, from neuroimaging to finance. This problem has received considerable attention in low-dimensional settings, with both Bayesian and frequentist methods used extensively for parameter estimation. The EM algorithm is a particularly popular strategy for parameter estimation in low-dimensional settings, although the statistical properties of the resulting estimates have not been well understood. Furthermore, its extension to high-dimensional time series has proved challenging. To overcome these challenges, in this paper we propose an approximate EM algorithm for Markov-switching VAR models that leads to efficient computation and also facilitates the investigation of asymptotic properties of the resulting parameter estimates. We establish the consistency of the proposed EM algorithm in high dimensions and investigate its performance via simulation studies.
翻译:高维时间序列的系统变化在许多应用中自然产生,从神经成形到融资。这个问题在低维环境中受到相当重视,贝耶斯和常客方法都广泛用于参数估计。EM算法是低维环境中参数估计特别流行的战略,尽管由此得出的估计数的统计属性还没有得到很好理解。此外,将其延伸至高维时间序列证明具有挑战性。为了克服这些挑战,我们在本文件中为Markov-witching VAR模型提出了一个近似EM算法,以导致高效计算,并便利对由此得出的参数估计的无症状特性进行调查。我们确定拟议的EM算法在高维度上的连贯性,并通过模拟研究来调查其性能。