- ``is_unbalance`` :raw-html:`<a id="is_unbalance" title="Permalink to this parameter" href="#is_unbalance">🔗︎</a>`, default = ``false``, type = bool, aliases: ``unbalance``, ``unbalanced_sets``
- used only in ``binary`` and ``multiclassova``
- used only in ``binary`` and ``multiclassova`` applications
- set this to ``true`` if training data are unbalanced
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@@ -740,7 +740,7 @@ Objective Parameters
- ``scale_pos_weight`` :raw-html:`<a id="scale_pos_weight" title="Permalink to this parameter" href="#scale_pos_weight">🔗︎</a>`, default = ``1.0``, type = double, constraints: ``scale_pos_weight > 0.0``
- used only in ``binary`` and ``multiclassova``
- used only in ``binary`` and ``multiclassova`` applications
- weight of labels with positive class
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@@ -756,7 +756,7 @@ Objective Parameters
- ``boost_from_average`` :raw-html:`<a id="boost_from_average" title="Permalink to this parameter" href="#boost_from_average">🔗︎</a>`, default = ``true``, type = bool
- used only in ``regression``, ``binary`` and ``cross-entropy`` applications
- used only in ``regression``, ``binary``, ``multiclassova`` and ``cross-entropy`` applications
- adjusts initial score to the mean of labels for faster convergence
// desc = used only in ``binary`` and ``multiclassova``
// desc = used only in ``binary`` and ``multiclassova`` applications
// desc = set this to ``true`` if training data are unbalanced
// desc = **Note**: while enabling this should increase the overall performance metric of your model, it will also result in poor estimates of the individual class probabilities
// desc = **Note**: this parameter cannot be used at the same time with ``scale_pos_weight``, choose only **one** of them
boolis_unbalance=false;
// check = >0.0
// desc = used only in ``binary`` and ``multiclassova``
// desc = used only in ``binary`` and ``multiclassova`` applications
// desc = weight of labels with positive class
// desc = **Note**: while enabling this should increase the overall performance metric of your model, it will also result in poor estimates of the individual class probabilities
// desc = **Note**: this parameter cannot be used at the same time with ``is_unbalance``, choose only **one** of them
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@@ -681,7 +681,7 @@ struct Config {
// desc = parameter for the sigmoid function
doublesigmoid=1.0;
// desc = used only in ``regression``, ``binary`` and ``cross-entropy`` applications
// desc = used only in ``regression``, ``binary``, ``multiclassova`` and ``cross-entropy`` applications
// desc = adjusts initial score to the mean of labels for faster convergence