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Learning the structure of dynamic probabilistic networks (1998)

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by Nir Friedman , Kevin Murphy , Stuart Russell
Citations:161 - 13 self
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BibTeX

@INPROCEEDINGS{Friedman98learningthe,
    author = {Nir Friedman and Kevin Murphy and Stuart Russell},
    title = {Learning the structure of dynamic probabilistic networks},
    booktitle = {},
    year = {1998},
    pages = {139--147},
    publisher = {Morgan Kaufmann}
}

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Abstract

Dynamic probabilistic networks are a compact representation of complex stochastic processes. In this paper we examine how to learn the structure of a DPN from data. We extend structure scoring rules for standard probabilistic networks to the dynamic case, and show how to search for structure when some of the variables are hidden. Finally, we examine two applications where such a technology might be useful: predicting and classifying dynamic behaviors, and learning causal orderings in biological processes. We provide empirical results that demonstrate the applicability of our methods in both domains. 1

Citations

6232 Maximum likelihood from incomplete data via the EM algorithm - Dempster, Laird, et al. - 1977
1581 Estimating the dimension of a model - SCHWARZ - 1978
950 System Identification :Theory for the User - Ljung - 1999
877 A Bayesian method for the induction of probabilistic networks from data - Cooper, Herskovits - 1992
752 Learning Bayesian networks: The combination of knowledge and statistical data - Heckerman, Geiger, et al. - 1995
512 Optimal Statistical Decisions - DeGroot - 1970
375 Factorial hidden markov models - Ghahramani, Jordan - 1997
228 Tractable inference for complex stochastic processes - Boyen, Koller - 1998
208 Learning Bayesian networks with local structure - Friedman, Goldszmidt - 1999
189 The Bayesian Structural EM Algorithm - Friedman - 1998
179 The EM algorithm for graphical association models with missing data - Lauritzen - 1995
164 F: Learning Bayesian belief networks; An approach based on the MDL principle. Comput Intell - Lam, Bacchus - 1994
154 Arkin A: Stochastic mechanisms in gene expression - McAdams - 1997
154 Probabilistic independence networks for hidden markov probability models - Smyth - 1997
153 Theory refinement on bayesian networks - Buntine - 1991
137 Stochastic simulation algorithms for dynamic probabilistic networks - Kanazawa, Koller, et al. - 1995
133 Adaptive probabilistic networks with hidden variables - Binder, Koller, et al. - 1997
107 Learning belief networks in the presence of missing values and hidden variables - Friedman - 1997
97 Speech recognition with dynamic bayesian networks - Zweig - 1998
94 Circuit simulation of genetic networks - McAdams, Shapiro - 1995
93 Learning Gaussian networks - Geiger, Heckerman - 1994
92 Probabilistic temporal reasoning - Dean, Kanazawa - 1988
87 The BATmobile: towards a bayesian automated taxi - Forbes, Huang, et al. - 1995
54 A computational scheme for reasoning in dynamic probabilistic networks - Kjaerulff - 1992
37 Switching State-Space Models - Ghahramani, Hinton - 1998
35 a general reverse engineering algorithm for inference of genetic network architectures - Reveal - 1998
28 Recursive Algorithms for Approximating Probabilities in Graphical Models - Jaakkola, Jordan - 1996
19 Structure and parameter learning for causal independence and causal interaction models - Meek, Heckerman - 1997
13 Traffic surveillance and detection technology development: new traffic sensor technology final report - Malik, Russel - 1997
10 Computing marginals for arbitrary subsets from marginal representation in markov trees - Xu - 1995
3 Feasibility study of fully automated traffic using decision-theoretic control - Forbes, Oza, et al. - 1997
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