pmd_con_ln {noisemodel} | R Documentation |
PMD-based confidence label noise
Description
Introduction of PMD-based confidence label noise into a classification dataset.
Usage
## Default S3 method:
pmd_con_ln(x, y, level, sortid = TRUE, ...)
## S3 method for class 'formula'
pmd_con_ln(formula, data, ...)
Arguments
x |
a data frame of input attributes. |
y |
a factor vector with the output class of each sample. |
level |
a double in [0,1] with the noise level to be introduced. |
sortid |
a logical indicating if the indices must be sorted at the output (default: |
... |
other options to pass to the function. |
formula |
a formula with the output class and, at least, one input attribute. |
data |
a data frame in which to interpret the variables in the formula. |
Details
PMD-based confidence label noise approximates the probability of noise using
the confidence prediction of a neural network. These predictions are used to estimate the
mislabeling probability and the most possible noisy class label for each sample. Finally,
(level
ยท100)% of the samples in the dataset are randomly selected to be mislabeled
according to their values of probability computed.
Value
An object of class ndmodel
with elements:
xnoise |
a data frame with the noisy input attributes. |
ynoise |
a factor vector with the noisy output class. |
numnoise |
an integer vector with the amount of noisy samples per class. |
idnoise |
an integer vector list with the indices of noisy samples. |
numclean |
an integer vector with the amount of clean samples per class. |
idclean |
an integer vector list with the indices of clean samples. |
distr |
an integer vector with the samples per class in the original data. |
model |
the full name of the noise introduction model used. |
param |
a list of the argument values. |
call |
the function call. |
Note
Noise model adapted from the papers in References.
References
Y. Zhang, S. Zheng, P. Wu, M. Goswami, and C. Chen. Learning with feature-dependent label noise: A progressive approach. In Proc. 9th International Conference on Learning Representations, pages 1-13, 2021. url:https://openreview.net/forum?id=ZPa2SyGcbwh.
See Also
clu_vot_ln
, sco_con_ln
, print.ndmodel
, summary.ndmodel
, plot.ndmodel
Examples
# load the dataset
data(iris2D)
# usage of the default method
set.seed(9)
outdef <- pmd_con_ln(x = iris2D[,-ncol(iris2D)], y = iris2D[,ncol(iris2D)], level = 0.1)
# show results
summary(outdef, showid = TRUE)
plot(outdef)
# usage of the method for class formula
set.seed(9)
outfrm <- pmd_con_ln(formula = Species ~ ., data = iris2D, level = 0.1)
# check the match of noisy indices
identical(outdef$idnoise, outfrm$idnoise)