LDR: A Package for Likelihood-Based Sufficient Dimension Reduction
We introduce a new mlab software package that implements several recently proposed likelihood-based methods for sufficient dimension reduction. Current capabilities include estimation of reduced subspaces with a fixed dimension d, as well as estimation of d by use of likelihood-ratio testing, permutation testing and information criteria. The methods are suitable for preprocessing data for both regression and classification. Implementations of related estimators are also available. Although the software is more oriented to command-line operation, a graphical user interface is also provided for prototype computations.
Year of publication: |
2011-03-01
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Authors: | Cook, R. Dennis ; Forzani, Liliana M. ; Tomassi, Diego R. |
Published in: |
Journal of Statistical Software. - American Statistical Association. - Vol. 39.2011, i03
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Publisher: |
American Statistical Association |
Saved in:
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