do.dagdne {Rdimtools} | R Documentation |
Double-Adjacency Graphs-based Discriminant Neighborhood Embedding
Description
Doublue Adjacency Graphs-based Discriminant Neighborhood Embedding (DAG-DNE) is a variant of DNE. As its name suggests, it introduces two adjacency graphs for homogeneous and heterogeneous samples accordaing to their labels.
Usage
do.dagdne(
X,
label,
ndim = 2,
numk = max(ceiling(nrow(X)/10), 2),
preprocess = c("center", "scale", "cscale", "decorrelate", "whiten")
)
Arguments
X |
an |
label |
a length- |
ndim |
an integer-valued target dimension. |
numk |
the number of neighboring points for k-nn graph construction. |
preprocess |
an additional option for preprocessing the data.
Default is "center". See also |
Value
a named list containing
- Y
an
(n\times ndim)
matrix whose rows are embedded observations.- trfinfo
a list containing information for out-of-sample prediction.
- projection
a
(p\times ndim)
whose columns are basis for projection.
Author(s)
Kisung You
References
Ding C, Zhang L (2015). “Double Adjacency Graphs-Based Discriminant Neighborhood Embedding.” Pattern Recognition, 48(5), 1734–1742.
See Also
Examples
## 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])
## try different numbers for neighborhood size
out1 = do.dagdne(X, label, numk=5)
out2 = do.dagdne(X, label, numk=10)
out3 = do.dagdne(X, label, numk=20)
## visualize
opar <- par(no.readonly=TRUE)
par(mfrow=c(1,3))
plot(out1$Y, main="nbd size=5", col=label, pch=19)
plot(out2$Y, main="nbd size=10",col=label, pch=19)
plot(out3$Y, main="nbd size=20",col=label, pch=19)
par(opar)