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Learning Bayesian Networks With Local Structure (1996)

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by Nir Friedman , Moises Goldszmidt
Citations:208 - 13 self
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BibTeX

@MISC{Friedman96learningbayesian,
    author = {Nir Friedman and Moises Goldszmidt},
    title = {Learning Bayesian Networks With Local Structure},
    year = {1996}
}

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Abstract

. We examine a novel addition to the known methods for learning Bayesian networks from data that improves the quality of the learned networks. Our approach explicitly represents and learns the local structure in the conditional probability distributions (CPDs) that quantify these networks. This increases the space of possible models, enabling the representation of CPDs with a variable number of parameters. The resulting learning procedure induces models that better emulate the interactions present in the data. We describe the theoretical foundations and practical aspects of learning local structures and provide an empirical evaluation of the proposed learning procedure. This evaluation indicates that learning curves characterizing this procedure converge faster, in the number of training instances, than those of the standard procedure, which ignores the local structure of the CPDs. Our results also show that networks learned with local structures tend to be more complex (in terms of a...

Citations

6517 Elements of Information Theory - Cover, Thomas - 1991
5662 Probabilistic reasoning in intelligent systems: networks of plausible inference - Pearl - 1988
4072 JR: C4.5: Programs for Machine Learning - Quinlan
1583 Estimating the dimension of a model - Schwarz - 1978
876 A Bayesian method for the induction of probabilistic networks from data - Cooper, Herskovits - 1992
751 Learning Bayesian networks: the combination of knowledge and statistical data - Heckerman, Geiger, et al. - 1995
274 Inferring decision trees using the minimum description length principle. Information and Computation 80.227–248 - QUINLAN, RIVEST - 1989
247 A tutorial on learning Bayesian networks - Heckerman - 1995
240 Context-specific independence in bayesian networks - Boutilier, Friedman, et al. - 1996
201 The ALARM monitoring system: A case study with two probabilistic inference techniques for belief networks - Beinlich, Suermondt, et al. - 1989
176 Sequential updating of conditional probabilities on directed graphical structures - Spiegelhalter, Lauritzen - 1990
163 Learning Bayesian belief networks: An approach based on the MDL principle - Lam, Bacchus - 1994
159 Connectionist learning of belief networks - Neal - 1992
120 Learning Bayesian networks is NP-complete - Chickering - 1996
112 Learning classification trees - BUNTINE - 1992
77 A Theory of Learning Classification Rules - Buntine - 1992
59 A new look at causal independence - Heckerman, Breese - 1994
59 A generalization of the noisyOR model - Srinivas - 1993
50 Parameter adjustment in Bayes networks. The generalized Noisy-OR gate - Díez - 1993
41 On the sample complexity of learning Bayesian networks - Friedman, Yakhini - 1996
22 The alarm monitoring system - Beinlich - 1989
7 Belief Network Induction - Musick - 1994
1 Theory refinement onBayesian networks - Buntine - 1991
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