Bayesian Networks / / edited by Wichian Premchaiswadi.
Bayesian Belief Networks are a powerful tool for combining different knowledge sources with various degrees of uncertainty in a mathematically sound and computationally efficient way. A Bayesian network is a graphical model that encodes probabilistic relationships among variables of interest. When u...
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Place / Publishing House: | Rijeka : : InTech,, 2012. ©2012 |
Year of Publication: | 2012 |
Language: | English |
Physical Description: | 1 online resource (xii, 126 pages) :; illustrations (some color) |
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(CKB)3230000000075634 (NjHacI)993230000000075634 (oapen)https://directory.doabooks.org/handle/20.500.12854/66019 (EXLCZ)993230000000075634 |
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Premchaiswadi, Wichian edt Bayesian Networks / edited by Wichian Premchaiswadi. IntechOpen 2012 Rijeka : InTech, 2012. ©2012 1 online resource (xii, 126 pages) : illustrations (some color) text txt rdacontent computer c rdamedia online resource cr rdacarrier Description based on publisher supplied metadata and other sources. Includes bibliographical references. Open access Unrestricted online access star Bayesian Belief Networks are a powerful tool for combining different knowledge sources with various degrees of uncertainty in a mathematically sound and computationally efficient way. A Bayesian network is a graphical model that encodes probabilistic relationships among variables of interest. When used in conjunction with statistical techniques, the graphical model has several advantages for data modeling. First, because the model encodes dependencies among all variables, it readily handles situations where some data entries are missing. Second, a Bayesian network can be used to learn causal relationships, and hence can be used to gain an understanding about a problem domain and to predict the consequences of intervention. Third, because the model has both causal and probabilistic semantics, it is an ideal representation for combining prior knowledge (which often comes in a causal form) and data. Fourth, Bayesian statistical methods in conjunction with Bayesian networks offer an efficient and principled approach to avoid the over fitting of data. English Bayesian statistical decision theory. Probability & statistics 953-51-0556-6 Premchaiswadi, Wichian, editor. |
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English |
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eBook |
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Premchaiswadi, Wichian, |
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Premchaiswadi, Wichian, |
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TeilnehmendeR |
title |
Bayesian Networks / |
spellingShingle |
Bayesian Networks / |
title_full |
Bayesian Networks / edited by Wichian Premchaiswadi. |
title_fullStr |
Bayesian Networks / edited by Wichian Premchaiswadi. |
title_full_unstemmed |
Bayesian Networks / edited by Wichian Premchaiswadi. |
title_auth |
Bayesian Networks / |
title_new |
Bayesian Networks / |
title_sort |
bayesian networks / |
publisher |
IntechOpen InTech, |
publishDate |
2012 |
physical |
1 online resource (xii, 126 pages) : illustrations (some color) |
isbn |
953-51-4997-0 953-51-0556-6 |
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Q - Science |
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QA - Mathematics |
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QA279 |
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QA 3279.5 B394 42012 |
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Illustrated |
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500 - Science |
dewey-tens |
510 - Mathematics |
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519 - Probabilities & applied mathematics |
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519.542 |
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3519.542 |
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519.542 |
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519.542 |
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AT premchaiswadiwichian bayesiannetworks |
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(CKB)3230000000075634 (NjHacI)993230000000075634 (oapen)https://directory.doabooks.org/handle/20.500.12854/66019 (EXLCZ)993230000000075634 |
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