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Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
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2.032
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23.060
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LASSO Regression

L1 regularization method that penalizes the absolute coefficients of features, forcing some coefficients to zero to perform automatic variable selection.

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Mutual Information

Statistical measure quantifying the dependency between two variables, used to evaluate the relevance of features relative to the target variable.

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Chi-Square Test

Statistical test evaluating the independence between categorical features and the target variable, used to filter irrelevant variables.

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ANOVA F-test

Statistical method comparing variances between groups to evaluate the importance of numerical features relative to a categorical target variable.

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Boruta Algorithm

Feature selection algorithm based on random forests that compares the importance of real features with randomly generated shadow features.

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SelectKBest

Univariate selection method choosing the k features with the highest statistical scores according to a specific test (chi2, f_classif, mutual_info_classif).

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Variance Threshold

Basic filtering technique eliminating features whose variance is below a predefined threshold, considered uninformative.

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Sequential Feature Selection

Greedy method sequentially adding or removing features to optimize a model performance metric according to a forward or backward strategy.

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Genetic Algorithm for Feature Selection

Metaheuristic approach using natural selection principles to explore the feature subset space and find a quasi-optimal solution.

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SHAP Values

Interpretability method based on game theory quantifying the impact of each feature on individual model predictions.

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Correlation-based Feature Selection

Method evaluating feature relevance by analyzing their correlation with the target variable while minimizing redundancy between features.

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Information Gain

Measure quantifying the entropy reduction of the target variable when a feature is known, used to evaluate variable relevance.

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Relief Algorithm

Filter feature selection algorithm evaluating variable relevance by comparing distances between similar and dissimilar instances.

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Auto Feature Selection

Automated process combining multiple selection techniques to identify the optimal feature subset without manual intervention.

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Embedded Methods

Feature selection approaches integrated directly into the model training process, such as decision trees or regularization methods.

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Wrapper Methods

Selection techniques using a machine learning model to evaluate feature subset quality through cross-validation or performance metrics.

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