do.mfa | R Documentation |
Marginal Fisher Analysis (MFA) is a supervised linear dimension reduction method. The intrinsic graph characterizes the intraclass compactness and connects each data point with its neighboring pionts of the same class, while the penalty graph connects the marginal points and characterizes the interclass separability.
do.mfa( X, label, ndim = 2, preprocess = c("center", "scale", "cscale", "decorrelate", "whiten"), k1 = max(ceiling(nrow(X)/10), 2), k2 = max(ceiling(nrow(X)/10), 2) )
X |
an (n\times p) matrix or data frame whose rows are observations. |
label |
a length-n vector of data class labels. |
ndim |
an integer-valued target dimension. |
preprocess |
an additional option for preprocessing the data.
Default is "center". See also |
k1 |
the number of same-class neighboring points (homogeneous neighbors). |
k2 |
the number of different-class neighboring points (heterogeneous neighbors). |
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.
Kisung You
yan_graph_2007Rdimtools
## generate data of 3 types with clear difference dt1 = aux.gensamples(n=20)-100 dt2 = aux.gensamples(n=20) dt3 = aux.gensamples(n=20)+100 ## merge the data and create a label correspondingly X = rbind(dt1,dt2,dt3) label = rep(1:3, each=20) ## try different numbers for neighborhood size out1 = do.mfa(X, label, k1=5, k2=5) out2 = do.mfa(X, label, k1=10,k2=10) out3 = do.mfa(X, label, k1=25,k2=25) ## visualize opar <- par(no.readonly=TRUE) par(mfrow=c(1,3)) plot(out1$Y, main="MFA::nbd size=5") plot(out2$Y, main="MFA::nbd size=10") plot(out3$Y, main="MFA::nbd size=25") par(opar)
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