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ISMB
1994
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Computational Biology
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ISMB 1994
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RNA Modeling Using Gibbs Sampling and Stochastic Context Free Grammars
14 years 5 days ago
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Leslie Grate, Mark Herbster, Richard Hughey, David
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Added
02 Nov 2010
Updated
02 Nov 2010
Type
Conference
Year
1994
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ISMB
Authors
Leslie Grate, Mark Herbster, Richard Hughey, David Haussler, I. Saira Mian, Harry Noller
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