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Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
kategori
2.032
subkategori
23.060
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Fair resampling

Preprocessing technique that modifies the training data distribution by over-representing minority or underrepresented groups to reduce algorithmic disparities in model predictions.

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Inverse probability weighting

Bias correction method assigning weights to training examples inversely proportional to their frequency in the population, thus compensating for demographic group imbalance.

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Adversarial learning for fairness

Approach of simultaneously training a main predictor and an adversary trying to predict sensitive attributes, forcing the main model to generate representations invariant to protected characteristics.

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Fair prediction calibration

Post-processing technique adjusting prediction scores to ensure predicted probabilities correspond consistently to observed frequencies across different demographic groups.

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Constrained fairness optimization

Training method incorporating mathematical constraints on fairness metrics directly into the objective function, ensuring fairness criteria are met during model optimization.

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Optimized equalized odds

Processing technique ensuring equal true positive rates between groups while maximizing overall performance, often implemented through specific loss functions or threshold adjustments.

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Adjusted demographic parity

Correction method ensuring positive predictions are distributed proportionally across different demographic groups, regardless of their intrinsic characteristics.

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Causal debiasing

Approach using causal graphs to identify and neutralize causal paths introducing bias, preserving only relevant relationships for the prediction task.

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Group invariance learning

Training technique forcing the model to learn representations invariant to variations between demographic groups while preserving information relevant to the main task.

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Post-hoc correction through adaptive thresholds

Method applied after training that dynamically adjusts decision thresholds by group to balance performance metrics and ensure fairness in final predictions.

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Disparity reduction through reweighting

Preprocessing technique that recalculates the weights of training instances to minimize statistical divergence between the observed distribution and a fair target distribution.

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Fair feature masking

Processing strategy that selectively masks or transforms potentially biased features during training to force the model to rely on non-discriminatory attributes.

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Selection bias correction

Set of techniques identifying and compensating for distortions introduced by non-random sampling processes that systematically favor certain subgroups of the population.

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Robust learning against fairness attacks

Training methodology incorporating adversarial examples designed to amplify biases, thereby strengthening the model's resistance against manipulations aimed at degrading its fairness.

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Debiasing through counterfactuals

Technique generating counterfactual examples by modifying sensitive attributes to train the model to produce predictions invariant to changes in these protected characteristics.

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Distribution balancing through optimal transport

Advanced method using optimal transport theory to transform the data distribution of a minority group to bring it closer to that of the majority group, thereby reducing systemic biases.

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Fair regularization by divergence

Training technique adding a penalty term based on divergence measures (KL, JS, Wasserstein) between the prediction distributions of different groups to ensure statistical fairness.

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