“…These include methods for analyzing stationary (Carter and Kohn, 1996; Cadonna et al, 2017; Choudhuri et al, 2004; Rosen and Stoffer, 2007; Macaro and Prado, 2014; Krafty et al, 2017) and nonstationary (Rosen et al, 2012; Zhang, 2016; Bruce et al, 2017) time series. Adaptive spectral analysis was introduced by Rosen et al (2012) as a Bayesian approach to univariate nonstationary spectrum analysis, and was latter extended to the multivariate nonstationary setting by Zhang (2016). Under this approach, a time series is adaptively partitioned into a random number of approximately stationary segments, local spectra are estimated within in approximately stationary segments, and time-varying spectral estimates are obtained by averaging local estimates over the distribution of partitions.…”