Title :
Lumpable hidden Markov models-model reduction and reduced complexity filtering
Author :
White, Langford B. ; Mahony, Robert ; Brushe, Gary D.
Author_Institution :
Dept. of Electr. & Electron. Eng., Adelaide Univ., SA, Australia
fDate :
12/1/2000 12:00:00 AM
Abstract :
This paper is concerned with filtering of hidden Markov processes (HMP) which possess (or approximately possess) the property of lumpability. This property is a generalization of the property of lumpability of a Markov chain which has been previously addressed by others. In essence, the property of lumpability means that there is a partition of the (atomic) states of the Markov chain into aggregated sets which act in a similar manner as far as the state dynamics and observation statistics are concerned. We prove necessary and sufficient conditions on the HMP for exact lumpability to hold. For a particular class of hidden Markov models (HMM), namely finite output alphabet models, conditions for lumpability of all HMP representable by a specified HMM are given. The corresponding optimal filter algorithms for the aggregated states are then derived. The paper also describes an approach to efficient suboptimal filtering for HMP which are approximately lumpable. By this we mean that the HMM generating the process may be approximated by a lumpable HMM. This approach involves directly finding a lumped HMM which approximates the original HMM well, in a matrix norm sense. An alternative approach for model reduction based on approximating a given HMM by an exactly lumpable HMM is also derived. This method is based on the alternating convex projections algorithm. Some simulation examples are presented which illustrate the performance of the suboptimal filtering algorithms
Keywords :
computational complexity; filtering theory; hidden Markov models; matrix algebra; optimisation; reduced order systems; HMM; HMP; Markov chain; aggregated sets; aggregated states; alternating convex projections algorithm; efficient suboptimal filtering; finite output alphabet models; hidden Markov processes; lumpable hidden Markov models; matrix norm approximation; model reduction; necessary and sufficient conditions; observation statistics; optimal filter algorithms; reduced complexity filtering; state dynamics; state partitioning; suboptimal filtering algorithms; Brushes; Filtering algorithms; Filters; Frequency estimation; Hidden Markov models; Modeling; Performance analysis; Reduced order systems; Statistics; Sufficient conditions;
Journal_Title :
Automatic Control, IEEE Transactions on