do.udp | R Documentation |
Unsupervised Discriminant Projection (UDP) aims finding projection that balances local and global scatter. Even though the name contains the word Discriminant, this algorithm is unsupervised. The term there reflects its algorithmic tactic to discriminate distance points not in the neighborhood of each data point. It performs PCA as intermittent preprocessing for rank singularity issue. Authors clearly mentioned that it is inspired by Locality Preserving Projection, which minimizes the local scatter only.
do.udp( X, ndim = 2, type = c("proportion", 0.1), preprocess = c("center", "scale", "cscale", "decorrelate", "whiten") )
X |
an (n\times p) matrix or data frame whose rows are observations and columns represent independent variables. |
ndim |
an integer-valued target dimension. |
type |
a vector of neighborhood graph construction. Following types are supported;
|
preprocess |
an additional option for preprocessing the data.
Default is "center". See also |
a named list containing
an (n\times ndim) matrix whose rows are embedded observations.
a list containing information for out-of-sample prediction.
a (p\times ndim) whose columns are basis for projection.
the number of PCA target dimension used in preprocessing.
Kisung You
yang_globally_2007Rdimtools
do.lpp
## load iris data data(iris) set.seed(100) subid = sample(1:150,50) X = as.matrix(iris[subid,1:4]) label = as.factor(iris[subid,5]) ## use different connectivity level out1 <- do.udp(X, type=c("proportion",0.05)) out2 <- do.udp(X, type=c("proportion",0.10)) out3 <- do.udp(X, type=c("proportion",0.25)) ## visualize opar <- par(no.readonly=TRUE) par(mfrow=c(1,3)) plot(out1$Y, col=label, pch=19, main="connectivity 5%") plot(out2$Y, col=label, pch=19, main="connectivity 10%") plot(out3$Y, col=label, pch=19, main="connectivity 25%") par(opar)
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