Title:
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Rank of tensors of $\ell $-out-of-$k$ functions: An application in probabilistic inference (English) |
Author:
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Vomlel, Jiří |
Language:
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English |
Journal:
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Kybernetika |
ISSN:
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0023-5954 |
Volume:
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47 |
Issue:
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3 |
Year:
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2011 |
Pages:
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317-336 |
Summary lang:
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English |
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Category:
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math |
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Summary:
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Bayesian networks are a popular model for reasoning under uncertainty. We study the problem of efficient probabilistic inference with these models when some of the conditional probability tables represent deterministic or noisy $\ell$-out-of-$k$ functions. These tables appear naturally in real-world applications when we observe a state of a variable that depends on its parents via an addition or noisy addition relation. We provide a lower bound of the rank and an upper bound for the symmetric border rank of tensors representing $\ell$-out-of-$k$ functions. We propose an approximation of tensors representing noisy $\ell$-out-of-$k$ functions by a sum of $r$ tensors of rank one, where $r$ is an upper bound of the symmetric border rank of the approximated tensor. We applied the suggested approximation to probabilistic inference in probabilistic graphical models. Numerical experiments reveal that we can get a gain in the order of two magnitudes but at the expense of a certain loss of precision. (English) |
Keyword:
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Bayesian networks |
Keyword:
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probabilistic inference |
Keyword:
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uncertainty in artificial intelligence |
Keyword:
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tensor rank |
Keyword:
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symmetric rank |
Keyword:
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border rank |
MSC:
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15A69 |
MSC:
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62E15 |
MSC:
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68T37 |
idZBL:
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Zbl 1221.68243 |
idMR:
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MR2857193 |
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Date available:
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2011-06-23T12:49:40Z |
Last updated:
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2013-09-22 |
Stable URL:
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http://hdl.handle.net/10338.dmlcz/141588 |
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Reference:
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