Learning and inference algorithms for partially observed structured switching vector autoregressive models

We present learning and inference algorithms for a versatile class of partially observed vector autoregressive (VAR) models for multivariate time-series data. VAR models can capture wide variety of temporal dynamics in a continuous multidimensional signal. Given a sequence of observations to be modeled by a VAR model, it is possible to estimate its… CONTINUE READING