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Identification of groups using projections of a vector of features of each time series in directions of extreme kurtosis coefficient.
ClusKur(x)
p by k data matrix: p features or variables for each time series and k time series in columns.
A list containing:
lbl - Cluster labels (possible outliers get negative labels).
ncl - Number of clusters.
# NOT RUN { data(Stockindexes99world) S <- Stockindexes99world[,-1] v1 <- apply(S,2, mean) v2 <- apply(S,2, sd) M <- rbind(v1,v2) out <- ClusKur(M) # }
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