Displaying 5 results from an estimated 5 matches for "slda".
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lda
2004 Dec 13
2
classification for huge datasets: SVM yields memory troubles
Hi
I have a matrix with 30 observations and roughly 30000 variables, each
obs belongs to one of two groups. With svm and slda I get into memory
troubles ('cannot allocate vector of size' roughly 2G). PCA LDA runs
fine. Are there any way to use the memory issue withe SVM's? Or can you
recommend any other classification method for such huge datasets?
P.S. I run suse 9.1 on a 2G RAM PIV machine.
thanks for a...
2008 Sep 06
0
New caret packages
...trees (C4.5, rpart, ctree, logistic model trees), mars
(via earth), boosted models (ada, gbm, blackboost, glmboost, gamboost,
logitboost), bagged models (trees, earth, fda), randomforests (randomforest
and cforest), rule-based models (Ripper and M5 prime), discriminant models
(lda, fda, rda, ssda, slda), kernel methods (lssvm, ksvm, rvm, gausspr),
nnet, nnet with initial pca step, multinom, pls, plsda, gpls, nearest
shrunken centroids, the lasso, the elastic net, supervised pca, knn, lvq and
NaiveBayes.
Recent changes include:
- Estimation of class probabilities from PLS discriminant analysis u...
2008 Sep 06
0
New caret packages
...trees (C4.5, rpart, ctree, logistic model trees), mars
(via earth), boosted models (ada, gbm, blackboost, glmboost, gamboost,
logitboost), bagged models (trees, earth, fda), randomforests (randomforest
and cforest), rule-based models (Ripper and M5 prime), discriminant models
(lda, fda, rda, ssda, slda), kernel methods (lssvm, ksvm, rvm, gausspr),
nnet, nnet with initial pca step, multinom, pls, plsda, gpls, nearest
shrunken centroids, the lasso, the elastic net, supervised pca, knn, lvq and
NaiveBayes.
Recent changes include:
- Estimation of class probabilities from PLS discriminant analysis u...
2003 Nov 10
1
criterion for variable selection in LDA
Hi
Since a stepwise procedure for variable selection (as e.g. in SPSS) for
a LDA is not implemented in R and anyway I cannot be sure, that all the
required assumptions for e.g. a procedure using a statistic based on
wilks' lambda, hold (such as normality and variance homogeneity) I would
like to ask you, what you would recommend me:
shall I e.g. define a criterion such as the error-rate
2009 Aug 24
6
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