English

Sample-Path Equivalent CM Models

Probability 2021-03-16 v4 Systems and Control Signal Processing Dynamical Systems

Abstract

The conditionally Markov (CM) sequence contains different classes including Markov, reciprocal, and so-called CMLCM_L and CMFCM_F (two special classes of CM sequences). Each class has its own forward and backward dynamic models. The evolution of a CM sequence can be described by different models. For example, a Markov sequence can be described by a Markov model, as well as by reciprocal, CMLCM_L, and CMFCM_F models. Also, sometimes a forward model is available, but it is desirable to have a backward model for the same sequence (e.g., in smoothing). Therefore, it is important to study relationships between different dynamic models of a CM sequence. This paper discusses such relationships between models of nonsingular Gaussian (NG) CMLCM_L, CMFCM_F, reciprocal, and Markov sequences. Two models are said to be explicitly sample-equivalent if not only they govern the same sequence, but also a one-one correspondence between their sample paths is made explicitly. A unified approach is presented, such that given a forward/backward CMLCM_L/CMFCM_F/reciprocal/Markov model, any explicitly equivalent model can be obtained. As a special case, a backward Markov model explicitly equivalent to a given forward Markov model can be obtained regardless of the singularity/nonsingularity of the state transition matrix of the model.

Keywords

Cite

@article{arxiv.1811.07804,
  title  = {Sample-Path Equivalent CM Models},
  author = {Reza Rezaie and X. Rong Li},
  journal= {arXiv preprint arXiv:1811.07804},
  year   = {2021}
}
R2 v1 2026-06-23T05:20:47.613Z