Plot Components
plotComponent(
x,
comp = c(1, 2),
addNames = TRUE,
nudge_x = 0.1,
nudge_y = 0.1,
size = 4,
...
)
output of compute_optimal_encoding
function
a vector of two elements indicating the components to plot
if TRUE, add the id labels on the plot
horizontal and vertical adjustment to nudge labels by
size of labels
geom_point
parameters
a ggplot
object that can be modified using ggplot2
package.
Other encoding functions:
compute_optimal_encoding()
,
get_encoding()
,
plot.fmca()
,
plotEigenvalues()
,
predict.fmca()
,
print.fmca()
,
summary.fmca()
# Simulate the Jukes-Cantor model of nucleotide replacement
K <- 4
Tmax <- 6
PJK <- matrix(1 / 3, nrow = K, ncol = K) - diag(rep(1 / 3, K))
lambda_PJK <- c(1, 1, 1, 1)
d_JK <- generate_Markov(n = 10, K = K, P = PJK, lambda = lambda_PJK, Tmax = Tmax)
d_JK2 <- cut_data(d_JK, Tmax)
# create basis object
m <- 6
b <- create.bspline.basis(c(0, Tmax), nbasis = m, norder = 4)
# \donttest{
# compute encoding
encoding <- compute_optimal_encoding(d_JK2, b, computeCI = FALSE, nCores = 1)
#> ######### Compute encoding #########
#> Number of individuals: 10
#> Number of states: 4
#> Basis type: bspline
#> Number of basis functions: 6
#> Number of cores: 1
#>
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#>
#> DONE in 0.11s
#> ---- Compute U matrix:
#>
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#>
#> DONE in 0.68s
#> ---- Compute encoding:
#> DONE in 0s
#> Run Time: 0.83s
plotComponent(encoding, comp = c(1, 2))
# modify the plot using ggplot2
library(ggplot2)
plotComponent(encoding, comp = c(1, 2), shape = 23) +
labs(title = "Two first components")
# }