《Variational Learning for Switching State-Space ModelS》.pdf
文本预览下载声明
Variational Learning for Switching State-Space Mo dels
Zoubin Ghahramani
Georey E. Hinton
Gatsby Computational Neuroscience Unit
University College London
17 Queen Square
London WC1N 3AR, UK
Email: zoubin@gatsby.ucl.ac.uk
Submitted to Neur al Computation
Abstract
We intro duce a new statistical mo del for time series which iteratively segments data into regimes with
approximately linear dynamics and learns the parameters of each of these linear regimes. This mo del
combines and generalizes two of the most widely used sto chastic time series mo dels|hidden Markov
mo dels and linear dynamical systems|and is closely related to mo dels that are widely used in the con-
trol and econometrics literatures. It can also b e derived by extending the mixture of exp erts neural
network (Jacobs et al., 1991) to its fully dynamical version, in which b oth exp ert and gating networks
are recurrent. Inferring the p osterior probabilities of the hidden states of this mo del is computationally
intractable, and therefore the exact Exp ectation Maximization (EM) algorithm cannot b e applied. How-
ever, we present a variational approximation that maximizes a lower b ound on the log likeliho o d and
makes use of b oth the forward{backward recursions for hidden Markov mo dels and the Kalman lter
recursions for linear dynamical systems. We tested the algorithm b oth on articial data sets and on a
natural data set of respiration for
显示全部