Description Usage Arguments Value
This function performs a cross-validation (on tuning parameters) of weighted SVMs for multicategory treatment comparisons.
1 2 3 4 5 6 7 8 9 10 11 12 13 14 | mlearn.wsvm.tune(
data,
idx,
trts,
max_size,
delta,
dist_mat,
g_func,
kernel = "rbfdot",
kpar = "automatic",
nfolds_inner = 3,
tuneGrid,
propensity
)
|
data |
a data frame containing the ID ( |
idx |
a data frame of two columns |
trts |
a vector of treatment names. |
max_size |
an integer indicating the upper limit of the sizes of all
matched sets. The default setting is |
delta |
a scalar, as defined in |
dist_mat |
a precalculated matrix of distances between subjects.
This matrix must include all subjects in |
g_func |
a function that transforms the differences between outcomes
of a set of subjects and the subjects in their matched sets to the weights
in SVMs. In |
kernel |
the kernel function used in SVMs. Supported argument values
can be found in |
kpar |
the list of hyper-parameters (kernel parameters). Valid
parameters for supported kernels can be found in |
nfolds_inner |
the number of folds in the cross-validation. Values greater than or equal to 3 usually yield better results. Default: 3. |
tuneGrid |
a data frame of tuning parameter(s). Each column for each parameter. Usually, the first column is the cost of constraints violation ("C"-constant) in SVMs. |
propensity |
a data frame with |
A list with 7 sublists as follows:
best_fit
: the final weighted SVM using the best tuning parameter(s).
params
: the list of tuning parameter(s) used to train the model.
Same as tuneGrid
.
best_param
: the best tuning parameter(s).
best_idx
: the index of the best tuning parameter(s) in tuneGrid
/params
.
cv_mat
: the matrix of the metric values for the cross-validation.
cv_est
: the cross-validation estimators (row means of cv_mat
).
foldid_inner
: a vector recording the split of folds.
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