simulateData2 {funLBM} | R Documentation |
Simulate bivariate data for funLBM
Description
Simulate bivariate data according to the funLBM model with K=4 groups for rows and L=3 groups for columns.
Usage
simulateData2(n = 100, p = 100, t = 30)
Arguments
n |
The number of rows (individuals) of the simulated data array, |
p |
The number of columns (functional variables) of the simulated data array, |
t |
The number of measures for the functions of the simulated data array. |
Value
The resulting object contains:
data1 |
data array of size n x p x t for first variable |
data2 |
data array of size n x p x t for second variable |
row_clust |
Group memberships of rows |
col_clust |
Group memberships of columns |
References
C. Bouveyron, L. Bozzi, J. Jacques and F.-X. Jollois, The Functional Latent Block Model for the Co-Clustering of Electricity Consumption Curves, Journal of the Royal Statistical Society, Series C, 2018 (https://doi.org/10.1111/rssc.12260).
See Also
Examples
# Simulate data and co-clustering
set.seed(12345)
X = simulateData2(n = 50, p = 50, t = 15)
# Co-clustering with funLBM
out = funLBM(list(X$data1,X$data2),K=4,L=3)
# Visualization of results
plot(out,type='blocks')
plot(out,type='proportions')
plot(out,type='means')
# Evaluating clustering results
ari(out$col_clust,X$col_clust)
ari(out$row_clust,X$row_clust)
[Package funLBM version 2.3 Index]