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3 projects in result set.
0. Structural equation modeling - Several SEM related packages are developed for conducting structural equation modeling. |
- Development Status : 5 - Production/Stable [Filter]
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- Topic : Multivariate Statistics : Latent Variable Approaches [Filter]
- Topic : Robust Statistics (Now Filtering)
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Registered: 2011-09-26 14:13 |
1. Dependency modeling toolbox - Model-based tools for the discovery and analysis of statistical dependencies between data sources. |
- Development Status : 5 - Production/Stable [Filter]
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- License : OSI Approved : BSD License [Filter]
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- Programming Language : R [Filter]
- Topic : Machine Learning : Bayesian Methods [Filter]
- Topic : Multivariate Statistics : Latent Variable Approaches [Filter]
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Registered: 2010-04-08 11:22 |
2. Generalized iLUCK-models - Interval/imprecise probability models allowing non-stochastic uncertainty in Bayesian analysis by defining sets of conjugate priors such that the set of posteriors, obtained by updating each prior in the set by Bayes' rule, is still easy to handle. |
- Development Status : 2 - Pre-Alpha [Filter]
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- License : OSI Approved : GNU General Public License (GPL) [Filter]
- Programming Language : R [Filter]
- Topic : Bayesian Statistics [Filter]
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- Topic : Robust Statistics (Now Filtering)
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Registered: 2010-03-06 00:28 |