Difference between revisions of "Siddiqi et al 2009 Reduced-Rank Hidden Markov Models"
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== Summary == | == Summary == | ||
− | This paper introduces Reduced-Rank Hidden Markov Models (RR-HMMs). RR- | + | This [[Category::paper]] introduces Reduced-Rank Hidden Markov Models (RR-HMMs). A RR-HMM is similar to standard [[UsesMethod::HMM]], except the rank of the transition matrix is less than the number of hidden states. The dynamics evolve in a subspace of the hidden state probability space. |
== Method == | == Method == | ||
− | + | Let <math>x_t</math> be the observed output of the RR-HMM and let: | |
[[File:Siddiqi et al 2009 Definition of P.png]] | [[File:Siddiqi et al 2009 Definition of P.png]] | ||
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[[File:Siddiqi et al 2009 Algorithm.png]] | [[File:Siddiqi et al 2009 Algorithm.png]] | ||
− | <math>\hat{b}_1</math> is the initial state distribution, <math>\hat{b}_\infty</math> is the final state distribution, and <math>\hat{B}_x</math> is the transition matrix when x is observed. m is the rank of the reduced state space. Note that <math>X^+</math> denotes the Moore-Penrose pseudo-inverse of the matrix <math>X</math>. | + | <math>\hat{b}_1</math> is the initial state distribution, <math>\hat{b}_\infty</math> is the final state distribution, and <math>\hat{B}_x</math> is the transition matrix when x is observed. <math>m</math> is the rank of the reduced state space. Note that <math>X^+</math> denotes the Moore-Penrose pseudo-inverse of the matrix <math>X</math>. |
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== Experimental Result == | == Experimental Result == | ||
+ | [[File:Siddiqi et al 2009 Results.png]] | ||
== Related Papers == | == Related Papers == | ||
In progress by [[User:Jmflanig]] | In progress by [[User:Jmflanig]] | ||
+ | |||
+ | == Comment == | ||
+ | |||
+ | This stuff is super cool but a little tricky to wrap one's head around. I wrote up these notes about the older Hsu paper, and Siddiqi too, a while ago and they may not be totally correct but here we go: http://brenocon.com/matrix_hmm.pdf | ||
+ | --[[User:Brendan|Brendan]] 23:21, 13 October 2011 (UTC) |
Latest revision as of 19:22, 13 October 2011
Contents
Citation
Online version
Summary
This paper introduces Reduced-Rank Hidden Markov Models (RR-HMMs). A RR-HMM is similar to standard HMM, except the rank of the transition matrix is less than the number of hidden states. The dynamics evolve in a subspace of the hidden state probability space.
Method
Let be the observed output of the RR-HMM and let:
The learning algorithm uses a singular value decomposition (SVD) of the correlation matrix between past and future observations. The algorithm is borrowed from Hsu et al 2009, with no change for the reduced-rank case.
is the initial state distribution, is the final state distribution, and is the transition matrix when x is observed. is the rank of the reduced state space. Note that denotes the Moore-Penrose pseudo-inverse of the matrix .
Inference can be performed using the model parameters:
Experimental Result
Related Papers
In progress by User:Jmflanig
Comment
This stuff is super cool but a little tricky to wrap one's head around. I wrote up these notes about the older Hsu paper, and Siddiqi too, a while ago and they may not be totally correct but here we go: http://brenocon.com/matrix_hmm.pdf --Brendan 23:21, 13 October 2011 (UTC)