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Kirkwood approximation

The Kirkwood superposition approximation was introduced in 1935 by John G. Kirkwood as a means of representing a discrete probability distribution.[1] The Kirkwood approximation for a discrete probability density function is given by

where

is the product of probabilities over all subsets of variables of size i in variable set . This kind of formula has been considered by Watanabe (1960) and, according to Watanabe, also by Robert Fano. For the three-variable case, it reduces to simply

The Kirkwood approximation does not generally produce a valid probability distribution (the normalization condition is violated). Watanabe claims that for this reason informational expressions of this type are not meaningful, and indeed there has been very little written about the properties of this measure. The Kirkwood approximation is the probabilistic counterpart of the interaction information.

Judea Pearl (1988 §3.2.4) indicates that an expression of this type can be exact in the case of a decomposable model, that is, a probability distribution that admits a graph structure whose cliques form a tree. In such cases, the numerator contains the product of the intra-clique joint distributions and the denominator contains the product of the clique intersection distributions.

References edit

  1. ^ Kirkwood, John G. (1935). "Statistical Mechanics of Fluid Mixtures". The Journal of Chemical Physics. 3 (5). AIP Publishing: 300–313. Bibcode:1935JChPh...3..300K. doi:10.1063/1.1749657. ISSN 0021-9606.
  • Jakulin, A. & Bratko, I. (2004), Quantifying and visualizing attribute interactions: An approach based on entropy, Journal of Machine Learning Research, (submitted) pp. 38–43.
  • Matsuda, Hiroyuki (2000-09-01). "Physical nature of higher-order mutual information: Intrinsic correlations and frustration". Physical Review E. 62 (3). American Physical Society (APS): 3096–3102. Bibcode:2000PhRvE..62.3096M. doi:10.1103/physreve.62.3096. ISSN 1063-651X. PMID 11088803.
  • Pearl, J. (1988). Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference. San Mateo, CA: Morgan Kaufmann/Elsevier. doi:10.1016/c2009-0-27609-4. ISBN 978-0-08-051489-5.
  • Watanabe, Satosi (1960). "Information Theoretical Analysis of Multivariate Correlation". IBM Journal of Research and Development. 4 (1). IBM: 66–82. doi:10.1147/rd.41.0066. ISSN 0018-8646.

kirkwood, approximation, kirkwood, superposition, approximation, introduced, 1935, john, kirkwood, means, representing, discrete, probability, distribution, discrete, probability, density, function, displaystyle, ldots, given, displaystyle, prime, ldots, prod,. The Kirkwood superposition approximation was introduced in 1935 by John G Kirkwood as a means of representing a discrete probability distribution 1 The Kirkwood approximation for a discrete probability density function P x 1 x 2 x n displaystyle P x 1 x 2 ldots x n is given by P x 1 x 2 x n i 1 n 1 T i V p T i 1 n 1 i T n 1 V p T n 1 T n 2 V p T n 2 T 1 V p T 1 displaystyle P prime x 1 x 2 ldots x n prod i 1 n 1 left prod mathcal T i subseteq mathcal V p mathcal T i right 1 n 1 i frac prod mathcal T n 1 subseteq mathcal V p mathcal T n 1 frac prod mathcal T n 2 subseteq mathcal V p mathcal T n 2 frac vdots prod mathcal T 1 subseteq mathcal V p mathcal T 1 where T i V p T i displaystyle prod mathcal T i subseteq mathcal V p mathcal T i is the product of probabilities over all subsets of variables of size i in variable set V displaystyle scriptstyle mathcal V This kind of formula has been considered by Watanabe 1960 and according to Watanabe also by Robert Fano For the three variable case it reduces to simply P x 1 x 2 x 3 p x 1 x 2 p x 2 x 3 p x 1 x 3 p x 1 p x 2 p x 3 displaystyle P prime x 1 x 2 x 3 frac p x 1 x 2 p x 2 x 3 p x 1 x 3 p x 1 p x 2 p x 3 The Kirkwood approximation does not generally produce a valid probability distribution the normalization condition is violated Watanabe claims that for this reason informational expressions of this type are not meaningful and indeed there has been very little written about the properties of this measure The Kirkwood approximation is the probabilistic counterpart of the interaction information Judea Pearl 1988 3 2 4 indicates that an expression of this type can be exact in the case of a decomposable model that is a probability distribution that admits a graph structure whose cliques form a tree In such cases the numerator contains the product of the intra clique joint distributions and the denominator contains the product of the clique intersection distributions References edit Kirkwood John G 1935 Statistical Mechanics of Fluid Mixtures The Journal of Chemical Physics 3 5 AIP Publishing 300 313 Bibcode 1935JChPh 3 300K doi 10 1063 1 1749657 ISSN 0021 9606 Jakulin A amp Bratko I 2004 Quantifying and visualizing attribute interactions An approach based on entropy Journal of Machine Learning Research submitted pp 38 43 Matsuda Hiroyuki 2000 09 01 Physical nature of higher order mutual information Intrinsic correlations and frustration Physical Review E 62 3 American Physical Society APS 3096 3102 Bibcode 2000PhRvE 62 3096M doi 10 1103 physreve 62 3096 ISSN 1063 651X PMID 11088803 Pearl J 1988 Probabilistic Reasoning in Intelligent Systems Networks of Plausible Inference San Mateo CA Morgan Kaufmann Elsevier doi 10 1016 c2009 0 27609 4 ISBN 978 0 08 051489 5 Watanabe Satosi 1960 Information Theoretical Analysis of Multivariate Correlation IBM Journal of Research and Development 4 1 IBM 66 82 doi 10 1147 rd 41 0066 ISSN 0018 8646 Retrieved from https en wikipedia org w index php title Kirkwood approximation amp oldid 1068734308, wikipedia, wiki, book, books, library,

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