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Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
kategori
2.032
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23.060
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Equalized Odds

Fairness criterion stating that a model's true positive rates and false positive rates should be equal across different demographic groups, ensuring uniform predictive performance.

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Fairness Audit

Systematic process of evaluating an AI model to identify, quantify, and document biases and performance disparities between groups, using fairness metrics and statistical analyses.

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Debiasing

Set of techniques aimed at reducing or eliminating biases in training data, algorithms, or model predictions, including pre-processing, in-processing, and post-processing methods.

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Sensitive Attributes

Demographic variables or personal characteristics (such as race, ethnicity, gender, age, religion) that are protected by law and whose use in automated decision-making may lead to discrimination.

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Fairness Score

Aggregate metric that quantifies the overall level of fairness of a model by combining multiple bias indicators (such as demographic parity or equal opportunity) into a single comparable value.

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Fair Reweighing

Pre-processing technique that adjusts the weights of training examples for different demographic groups to correct imbalances and satisfy specific fairness criteria such as demographic parity.

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Fairness Robustness Test

Evaluation that checks whether a model's fairness metrics remain stable in the face of slight data perturbations or changes in population distribution, ensuring durable fairness.

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