Shannon meets Bellman: Feature based Markovian models for detection and optimization


ThresholdAndMW

 

 

Abstract: The goal of this paper is to develop modeling techniques for complex systems for the purposes of control, estimation, and inference:

  • A new class of hidden Markov models is introduced, called the optimal feature prediction (OFP) model. It is similar to the Gaussian mixture model in which the actual marginal distribution is used in place of a Gaussian distribution. This structure leads to simple learning algorithms to find an optimal model.
  • The OFP model provides a unification of other modeling approaches including the projective methods of Shannon, Mori and Zwanzig, and Chorin, as well as a version of the binning technique for Markov model reduction.
  • Several general applications are surveyed, including inference and optimal control. Computation of the spectrum, or solutions to dynamic programming equations are possible through a finite dimensional matrix calculation without knowledge of the underlying marginal distribution on which the model is based.
 
     

Policy

References

@unpublished{matmey07,
Author = {Mathew, G. and Meyn, S.},
Note = {{2008 IEEE Conf. on Dec. and Control.} {Preliminary version presented at Info. Thy. \&\ Appl. at ITA, UCSD 2008.}},
Title = {Shannon meets Bellman: Feature based Markovian models for detection and optimization}}

See also Chapter 11 of CTCN, and

@unpublished{mehmey09a,
Author = {Mehta, P. and Meyn, S.},
Month = {December 16-18},
Note = {48th IEEE Conference on Decision and Control},
Title = {{Q}-Learning and {Pontryagin's Minimum Principle}},
Year = {2009}}


@unpublished{chehuakulunnzhumehmeywie09,
Author = {Chen, W. and Huang, D. and Kulkarni, A. and Unnikrishnan, J. and Zhu, Q. and Mehta, P. and Meyn, S. and Wierman, A.},
Month = {December 16-18},
Note = {48th IEEE Conference on Decision and Control},
Title = {Approximate Dynamic Programming using Fluid and Diffusion Approximations with Applications to Power Management},
Year = {2009}

spm

Site Meter