is_nondominated {eaf} | R Documentation |
Identify, remove and rank dominated points according to Pareto optimality
Description
Identify nondominated points with is_nondominated
and remove dominated
ones with filter_dominated
.
pareto_rank()
ranks points according to Pareto-optimality,
which is also called nondominated sorting (Deb et al. 2002).
Usage
is_nondominated(data, maximise = FALSE, keep_weakly = FALSE)
filter_dominated(data, maximise = FALSE, keep_weakly = FALSE)
pareto_rank(data, maximise = FALSE)
Arguments
data |
( |
maximise |
( |
keep_weakly |
If |
Details
pareto_rank()
is meant to be used like rank()
, but it
assigns ranks according to Pareto dominance. Duplicated points are kept on
the same front. When ncol(data) == 2
, the code uses the O(n
\log n)
algorithm by Jensen (2003).
Value
is_nondominated
returns a logical vector of the same length
as the number of rows of data
, where TRUE
means that the
point is not dominated by any other point.
filter_dominated
returns a matrix or data.frame with only mutually nondominated points.
pareto_rank()
returns an integer vector of the same length as
the number of rows of data
, where each value gives the rank of each
point.
Author(s)
Manuel López-Ibáñez
References
Kalyanmoy Deb, A Pratap, S Agarwal, T Meyarivan (2002).
“A fast and elitist multi-objective genetic algorithm: NSGA-II.”
IEEE Transactions on Evolutionary Computation, 6(2), 182–197.
doi: 10.1109/4235.996017.
M
T Jensen (2003).
“Reducing the run-time complexity of multiobjective EAs: The NSGA-II and other algorithms.”
IEEE Transactions on Evolutionary Computation, 7(5), 503–515.
Examples
path_A1 <- file.path(system.file(package="eaf"),"extdata","ALG_1_dat.xz")
set <- read_datasets(path_A1)[,1:2]
is_nondom <- is_nondominated(set)
cat("There are ", sum(is_nondom), " nondominated points\n")
plot(set, col = "blue", type = "p", pch = 20)
ndset <- filter_dominated(set)
points(ndset[order(ndset[,1]),], col = "red", pch = 21)
ranks <- pareto_rank(set)
colors <- colorRampPalette(c("red","yellow","springgreen","royalblue"))(max(ranks))
plot(set, col = colors[ranks], type = "p", pch = 20)