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Topic :: Machine Learning :: Regularized and Shrinkage Methods [Remove This Filter]
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Programming Language :: R [Remove This Filter]
3 projects in result set.
0. MeDiChI - R package implementing model based deconvolution of ChIP-chip (transcription factor binding) data, as published in Bioinformatics journal.
Please visit http://baliga.systemsbiology.net/medichi for source code, instructions, and R package downloads. |
- Development Status : 5 - Production/Stable [Filter]
- Environment : Console (Text Based) [Filter]
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- License : OSI Approved : GNU General Public License (GPL) (Now Filtering)
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- Topic : Bioinformatics : Statistics [Filter]
- Topic : Machine Learning : Regularized and Shrinkage Methods (Now Filtering)
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Registered: 2010-05-14 17:13 |
1. mboost - Boosting algorithms for fitting generalized linear, additive and interaction models to potentially high-dimensional data.
For an up to date version see https://github.com/boost-R/mboost |
- Development Status : 5 - Production/Stable [Filter]
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- License : OSI Approved : GNU General Public License (GPL) (Now Filtering)
- Natural Language : English [Filter]
- Programming Language : R (Now Filtering)
- Topic : Machine Learning : Boosting [Filter]
- Topic : Machine Learning : Regularized and Shrinkage Methods (Now Filtering)
- Topic : Multivariate Statistics : Linear Models [Filter]
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Registered: 2007-07-07 15:13 |
2. CoxFlexBoost - CoxFlexBoost:
likelihood-based boosting approach to fit structured Cox-type survival models with linear, smooth and (linear/smooth) time-varying effects.
By applying a component-wise boosting approach variable selection and model choice are possible. |
- Development Status : 4 - Beta [Filter]
- Development Status : 5 - Production/Stable [Filter]
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- License : OSI Approved : GNU General Public License (GPL) (Now Filtering)
- Natural Language : English [Filter]
- Programming Language : R (Now Filtering)
- Topic : Machine Learning : Boosting [Filter]
- Topic : Machine Learning : Model Selection and Validation [Filter]
- Topic : Machine Learning : Regularized and Shrinkage Methods (Now Filtering)
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Registered: 2008-10-30 14:30 |