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Results 1 to 25 of 156

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Toward better scoring metrics for pseudo-independent modelsXIANG, Y; LEE, J; CERCONE, N et al.International journal of intelligent systems. 2004, Vol 19, Num 8, pp 749-768, issn 0884-8173, 20 p.Article

Guided incremental construction of belief networksSUTTON, Charles A; BURNS, Brendan; MORRISON, Clayton et al.Lecture notes in computer science. 2003, pp 533-543, issn 0302-9743, isbn 3-540-40813-4, 11 p.Conference Paper

An interactive system for generating arguments in deceptive communicationCAROFIGLIOL, Valeria; CASTELFRANCHI, Cristiano; DE ROSIS, Fiorella et al.Lecture notes in computer science. 2001, pp 255-266, issn 0302-9743, isbn 3-540-42601-9Conference Paper

Decision analytic networks in artificial intelligenceMATZKEVICH, I; ABRAMSON, B.Management science. 1995, Vol 41, Num 1, pp 1-22, issn 0025-1909Article

Emotional dialogs with an embodied AgentCAVALLUZZI, Addolorata; DE CAROLIS, Berardina; CAROFIGLIO, Valeria et al.Lecture notes in computer science. 2003, pp 86-95, issn 0302-9743, isbn 3-540-40381-7, 10 p.Conference Paper

A bayesian belief Network for reliability assessmentGRAN, Bjørn Axel; HELMINEN, Atte.Lecture notes in computer science. 2001, pp 35-45, issn 0302-9743, isbn 3-540-42607-8Conference Paper

Practicable sensitivity analysis of Bayesian belief networksCOUPE, V. M. H; VAN DER GAAG, L. C.Prague conference on information theory, statistical decision functions and random processesPrague symposium on asymptotic statistics. 1998, isbn 80-7015-636-8, 2Vol, vol 1, 81-86Conference Paper

Two-phase updating of student models based on dynamic belief networksREYE, J.Lecture notes in computer science. 1998, pp 274-283, issn 0302-9743, isbn 3-540-64770-8Conference Paper

Local score computation in learning belief networksXIANG, Y; LEE, J.Lecture notes in computer science. 2001, pp 152-161, issn 0302-9743, isbn 3-540-42144-0Conference Paper

Cost-based abduction and MAP explanationCHARNIAK, E; SHIMONY, S. E.Artificial intelligence. 1994, Vol 66, Num 2, pp 345-374, issn 0004-3702Article

Inferring certification metrics of package software using Bayesian belief networkLEE, Chongwon; LEE, Byungjeong; OH, Jaewon et al.Lecture notes in control and information sciences. 2006, pp 915-920, issn 0170-8643, isbn 3-540-37255-5, 1Vol, 6 p.Conference Paper

cbCPT: Knowledge engineering support for CPTs in Bayesian networksZAPATA-RIVERA, Diego.Lecture notes in computer science. 2002, pp 368-370, issn 0302-9743, isbn 3-540-43724-X, 3 p.Conference Paper

Probabilistisches Reasoning über vage Grössen = Probabilistic reasoning about vaguenessRITTGEN, P; WENDT, O; KÖNIG, W et al.Wirtschaftsinformatik. 1995, Vol 37, Num 2, pp 139-148, issn 0937-6429Article

On the revision of probabilistic beliefs using uncertain evidenceHEI CHAN; DARWICHE, Adnan.Artificial intelligence. 2005, Vol 163, Num 1, pp 67-90, issn 0004-3702, 24 p.Article

The search of causal orderings : A short cut for learning belief networksACID, Silvia; DE CAMPOS, Luis M; HUETE, Juan F et al.Lecture notes in computer science. 2001, pp 216-227, issn 0302-9743, isbn 3-540-42464-4Conference Paper

TAN classifiers based on decomposable distributionsCERQUIDES, Jesus; LOPEZ DE MANTARAS, Ramon.Machine learning. 2005, Vol 59, Num 3, pp 323-354, issn 0885-6125, 32 p.Article

Extending plan inference techniques to recognize intentions in information graphicsELZER, Stephanie; GREEN, Nancy; CARBERRY, Sandra et al.Lecture notes in computer science. 2003, pp 122-132, issn 0302-9743, isbn 3-540-40381-7, 11 p.Conference Paper

Computing marginals for arbitrary subsets from marginal representation in Markov treesHONG XU.Artificial intelligence. 1995, Vol 74, Num 1, pp 177-189, issn 0004-3702Article

Fusion and propagation with multiple observations in belief networksPEOT, M. A; SHACHTER, R. D.Artificial intelligence. 1991, Vol 48, Num 3, pp 299-318, issn 0004-3702Article

An analytical approach to quantitative effect estimation of operation advisory system based on human cognitive process using the Bayesian belief networkSEUNG JUN LEE; MAN CHEOL KIM; POONG HYUN SEONG et al.Reliability engineering & systems safety. 2008, Vol 93, Num 4, pp 567-577, issn 0951-8320, 11 p.Article

Structural extension to logistic regression: Discriminative parameter learning of belief net classifiersGREINER, Russell; XIAOYUAN SU; BIN SHEN et al.Machine learning. 2005, Vol 59, Num 3, pp 297-322, issn 0885-6125, 26 p.Article

Learning a causal model from household survey data by using a Bayesian belief networkTORRES, Francisco J; HUBER, Manfred.Transportation research record. 2003, Num 1836, pp 29-36, issn 0361-1981, 8 p.Article

Learning Bayesian belief network classifiers : Algorithms and systemJIE CHENG; GREINER, Russell.Lecture notes in computer science. 2001, pp 141-151, issn 0302-9743, isbn 3-540-42144-0Conference Paper

Stochastic local algorithms for learning belief networks : Searching in the space of the orderingsDE CAMPOS, Luis M; PUERTA, J. Miguel.Lecture notes in computer science. 2001, pp 228-239, issn 0302-9743, isbn 3-540-42464-4Conference Paper

Entropy and MDL discretization of continuous variables for Bayesian belief networksCLARKE, E. J; BARTON, B. A.International journal of intelligent systems. 2000, Vol 15, Num 1, pp 61-92, issn 0884-8173Article

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