stabilityDocumentation: Stability of Feature Selection

stabilityDocumentationR Documentation

Stability of Feature Selection

Description

The stability of feature selection is defined as the robustness of the sets of selected features with respect to small variations in the data on which the feature selection is conducted. To quantify stability, several datasets from the same data generating process can be used. Alternatively, a single dataset can be split into parts by resampling. Either way, all datasets used for feature selection must contain exactly the same features. The feature selection method of interest is applied on all of the datasets and the sets of chosen features are recorded. The stability of the feature selection is assessed based on the sets of chosen features using stability measures.

Arguments

features

list (length >= 2)
Chosen features per dataset. Each element of the list contains the features for one dataset. The features must be given by their names (character) or indices (integerish).

penalty

numeric(1)
Penalty parameter, see Details.

impute.na

numeric(1)
In some scenarios, the stability cannot be assessed based on all feature sets. E.g. if some of the feature sets are empty, the respective pairwise comparisons yield NA as result. With which value should these missing values be imputed? NULL means no imputation.

N

numeric(1)
Number of random feature sets to consider. Only relevant if correction.for.chance is set to "estimate".

sim.mat

numeric matrix
Similarity matrix which contains the similarity structure of all features based on all datasets. The similarity values must be in the range of [0, 1] where 0 indicates very low similarity and 1 indicates very high similarity. If the list elements of features are integerish vectors, then the feature numbering must correspond to the ordering of sim.mat. If the list elements of features are character vectors, then sim.mat must be named and the names of sim.mat must correspond to the entries in features.

threshold

numeric(1)
Threshold for indicating which features are similar and which are not. Two features are considered as similar, if and only if the corresponding entry of sim.mat is greater than or equal to threshold.

Value

numeric(1) Stability value.

Notation

For the definition of all stability measures in this package, the following notation is used: Let V_1, \ldots, V_m denote the sets of chosen features for the m datasets, i.e. features has length m and V_i is a set which contains the i-th entry of features. Furthermore, let h_j denote the number of sets that contain feature X_j so that h_j is the absolute frequency with which feature X_j is chosen. Analogously, let h_{ij} denote the number of sets that include both X_i and X_j. Also, let q = \sum_{j=1}^p h_j = \sum_{i=1}^m |V_i| and V = \bigcup_{i=1}^m V_i.

See Also

listStabilityMeasures


stabm documentation built on April 4, 2023, 5:12 p.m.