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Glosarium AI

Kamus lengkap Kecerdasan Buatan

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Group Cross-Validation

Cross-validation technique where observations are grouped according to predefined criteria to prevent information leakage between training and test sets.

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Leave-One-Group-Out (LOGO)

Cross-validation variant where an entire group is left out for testing at each iteration, ensuring complete separation of grouped data.

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Stratified Group K-Fold

Combination of stratified K-Fold and group K-Fold preserving both class distribution and group integrity in each partition.

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Group Shuffle Split

Cross-validation technique randomly distributing groups between training and test sets with control over the number of iterations and proportions.

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Time Series Group Split

Cross-validation adapted for grouped time series data respecting chronological order while preventing leakage between temporally correlated groups.

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Nested Group Cross-Validation

Two-level cross-validation using groups to prevent overfitting during hyperparameter selection and final model evaluation.

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Group-aware Feature Selection

Feature selection process considering group structure to avoid selecting features that introduce information leakage.

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Group Leakage

Phenomenon where information from a group appears in both training and test sets, artificially biasing model performance.

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Group-wise Scoring

Evaluation method calculating performance metrics by group before aggregating them, allowing identification of performance disparities between groups.

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Hierarchical Group Cross-Validation

Advanced technique handling nested or hierarchical group structures to preserve multi-level dependency relationships.

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Group Blocking

Strategy explicitly preventing observations from the same group from being split between training and test sets during cross-validation.

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Group-based Bootstrapping

Resampling method where entire groups are drawn with replacement rather than individual observations, preserving dependency structure.

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Multi-level Group Cross-Validation

Cross-validation simultaneously handling multiple grouping levels for complex data structures with cross-dependencies.

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Group-aware Hyperparameter Tuning

Hyperparameter optimization using group cross-validation to ensure unbiased evaluation of model performance.

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Group Imbalance Handling

Adaptive techniques for handling imbalances in group size or representation during cross-validation.

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Cross-Group Generalization

Model's ability to perform on groups not seen during training, specifically evaluated through group cross-validation.

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Group-aware Pipeline

Processing chain integrating group management at each stage, from preprocessing to final evaluation, including training.

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