report
Construction and comparison of approximations for switching linear gaussian state space models
Barber, David
2005
We consider approximate inference in a class of switching linear Gaussian State Space models which includes the switching Kalman Filter and the more general case of switch transitions dependent on the continuous hidden state. The method is a novel form of Gaussian sum smoother consisting of a single forward and backward pass, and compares favourably against a range of competing techniques, including sequential Monte Carlo and Expectation Propagation.
Type
report
Author(s)
Barber, David
Date Issued
2005
Publisher
IDIAP
Subjects
Written at
EPFL
EPFL units
Available on Infoscience
March 10, 2006
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