vccp - Vine Copula Change Point Detection in Multivariate Time Series
Implements the Vine Copula Change Point (VCCP) methodology
for the estimation of the number and location of multiple
change points in the vine copula structure of multivariate time
series. The method uses vine copulas, various state-of-the-art
segmentation methods to identify multiple change points, and a
likelihood ratio test or the stationary bootstrap for
inference. The vine copulas allow for various forms of
dependence between time series including tail, symmetric and
asymmetric dependence. The functions have been extensively
tested on simulated multivariate time series data and fMRI
data. For details on the VCCP methodology, please see Xiong &
Cribben (2021).