extract_permutation_vimp | R Documentation |
Computes and collects permutation variable importance from a
familiarEnsemble
.
extract_permutation_vimp(
object,
data,
cl = NULL,
ensemble_method = waiver(),
feature_similarity,
feature_cluster_method = waiver(),
feature_linkage_method = waiver(),
feature_cluster_cut_method = waiver(),
feature_similarity_metric = waiver(),
feature_similarity_threshold = waiver(),
metric = waiver(),
evaluation_times = waiver(),
detail_level = waiver(),
estimation_type = waiver(),
aggregate_results = waiver(),
confidence_level = waiver(),
bootstrap_ci_method = waiver(),
is_pre_processed = FALSE,
message_indent = 0L,
verbose = FALSE,
...
)
object |
A |
data |
A |
cl |
Cluster created using the |
ensemble_method |
Method for ensembling predictions from models for the same sample. Available methods are:
|
feature_cluster_method |
The method used to perform clustering. These are
the same methods as for the
If not provided explicitly, this parameter is read from settings used at
creation of the underlying |
feature_linkage_method |
The method used for agglomerative clustering in
If not provided explicitly, this parameter is read from settings used at
creation of the underlying |
feature_cluster_cut_method |
The method used to divide features into
separate clusters. The available methods are the same as for the
If not provided explicitly, this parameter is read from settings used at
creation of the underlying |
feature_similarity_metric |
Metric to determine pairwise similarity
between features. Similarity is computed in the same manner as for
clustering, and If not provided explicitly, this parameter is read from settings used at
creation of the underlying |
feature_similarity_threshold |
The threshold level for pair-wise
similarity that is required to form feature clusters with the If not provided explicitly, this parameter is read from settings used at
creation of the underlying |
metric |
One or more metrics for assessing model performance. See the
vignette on performance metrics for the available metrics. If not provided
explicitly, this parameter is read from settings used at creation of the
underlying |
evaluation_times |
One or more time points that are used for in analysis of
survival problems when data has to be assessed at a set time, e.g.
calibration. If not provided explicitly, this parameter is read from
settings used at creation of the underlying |
detail_level |
(optional) Sets the level at which results are computed and aggregated.
Note that each level of detail has a different interpretation for bootstrap
confidence intervals. For
A non-default |
estimation_type |
(optional) Sets the type of estimation that should be possible. This has the following options:
As with |
aggregate_results |
(optional) Flag that signifies whether results
should be aggregated during evaluation. If The default value is equal to As with |
confidence_level |
(optional) Numeric value for the level at which
confidence intervals are determined. In the case bootstraps are used to
determine the confidence intervals bootstrap estimation, The default value is |
bootstrap_ci_method |
(optional) Method used to determine bootstrap confidence intervals (Efron and Hastie, 2016). The following methods are implemented:
Note that the standard method is not implemented because this method is often not suitable due to non-normal distributions. The bias-corrected and accelerated (BCa) method is not implemented yet. |
is_pre_processed |
Flag that indicates whether the data was already
pre-processed externally, e.g. normalised and clustered. Only used if the
|
message_indent |
Number of indentation steps for messages shown during computation and extraction of various data elements. |
verbose |
Flag to indicate whether feedback should be provided on the computation and extraction of various data elements. |
... |
Unused arguments. |
This function also computes credibility intervals for the ensemble
model, at the level of confidence_level
.
A list with data.tables for single and ensemble model assessments.
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