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Mocapy++ - a toolkit for inference and learning in dynamic Bayesian networks
Martin Paluszewski,
Thomas Wim Hamelryck
Computational and RNA Biology
14
Citations (Scopus)
963
Downloads (Pure)
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Keyphrases
Dynamic Bayesian Network
100%
Directional Statistics
66%
User Manual
33%
Biomolecular Structure
33%
Kent Distribution
33%
Bivariate Von Mises Distribution
33%
Parameter Inference
33%
Parameter Learning
33%
General Public License
33%
SourceForge
33%
Angle Orientation
33%
Angle Direction
33%
Usage Example
33%
Biochemistry, Genetics and Molecular Biology
Probability Distribution
100%
RNA Structure
100%
Computer Science
Dynamic Bayesian Network
100%
Network Architecture
33%
Learning Parameter
33%
General Public License
33%
Neuroscience
Protein Structure
100%
Engineering
Directional
100%
Mathematics
Directional Statistics
66%