This option tells the node to use field information specified here instead of that given in
any upstream Type node(s). After selecting this option, specify fields as required.
target
field
inputs
field
alpha
Double
The alpha linear booster parameter. Specify any number 0 or greater. Default
is 0.
lambda
Double
The lambda linear booster parameter. Specify any number 0 or greater.
Default is 1.
lambdaBias
Double
The lambda bias linear booster parameter. Specify any number. Default is
0.
num_boost_round
integer
The num boost round value for model building. Specify a value between 1 and
1000. Default is 10.
objectiveType
string
The objective type for the learning task. Possible values are reg:linear,
reg:logistic, reg:gamma, reg:tweedie,
count:poisson, rank:pairwise, binary:logistic,
or multi. Note that for flag targets, only binary:logistic or
multi can be used. If multi is used, the score result will show
the multi:softmax and multi:softprob XGBoost objective
types.
random_seed
integer
The random number seed. Any number between 0 and 9999999.
Default is 0.
useHPO
Boolean
Specify true or false to enable or disable the HPO options.
If set to true, Rbfopt will be applied to find out the "best" One-Class SVM model
automatically, which reaches the target objective value defined by the user with the
target_objval parameter.
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