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YZ Sözlüğü

Yapay Zekanın tam sözlüğü

162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Mean Decrease in Impurity (MDI)

Variable importance evaluation method that measures the average reduction in impurity (Gini or entropy) brought by each feature during the construction of trees in an ensemble model.

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terimler

Mean Decrease in Accuracy (MDA)

Permutation importance technique that evaluates the impact of a variable by measuring the performance drop of the model when the values of this variable are randomly permuted on the test set.

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terimler

Gain Ratio Importance

Importance measure based on the information gain ratio, which normalizes the information gain by the entropy of the feature to penalize variables with a large number of distinct values.

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terimler

Out-of-Bag (OOB) Feature Importance

Importance evaluation technique using the OOB samples of each tree in a random forest, measuring the increase in OOB error when the values of a variable are permuted in these samples.

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terimler

Conditional Permutation Importance

Variant of permutation importance that respects dependencies between features by permuting values conditionally on other variables, reducing bias for correlated features.

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terimler

Drop Column Importance

Importance evaluation method that measures the impact of completely removing a feature by retraining the model without this variable and comparing performance with the full model.

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terimler

Impurity-based Feature Importance

Class of importance evaluation methods based on the reduction of node impurity during tree construction, including MDI and Gini Importance, but which can be biased towards high-cardinality features.

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