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Kamus lengkap Kecerdasan Buatan

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Interpretable AutoML

Subfield of AutoML that aims to automatically generate machine learning models that simultaneously optimize predictive performance and human interpretability of decisions.

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Performance-Interpretability Trade-off

Fundamental dilemma in AutoML where improving predictive accuracy often comes with decreased model interpretability, requiring an optimal balance depending on the use case.

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Local Feature Importance

Evaluation of the impact of each feature on a specific prediction, explaining why the model made a particular decision for a given individual.

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Explainability vs Interpretability

Distinction where interpretability concerns intrinsic understanding of the model mechanism, while explainability aims to provide understandable justifications of predictions, even for opaque models.

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Surrogate Models

Simple and interpretable models trained to approximate the behavior of a complex model, allowing generation of global or local explanations of the original model's decisions.

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Model-agnostic Explanations

Interpretation techniques that can be applied to any type of machine learning model without requiring knowledge of its internal architecture.

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Rule-based Models

Models using sets of interpretable IF-THEN rules to make decisions, offering a natural balance between performance and transparency in AutoML.

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Post-hoc Interpretability

Approach consisting of analyzing and explaining an already trained model without modifying its structure, unlike intrinsically interpretable models.

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Automated Feature Selection

AutoML process that automatically identifies the optimal subset of predictive variables that maximizes performance while preserving the interpretability of the final model.

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Fidelity Score

Metric that evaluates the fidelity of an explanation or surrogate model by measuring how faithfully it reproduces the predictions of the original model.

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Interpretable Neural Networks

Neural network architectures specifically designed to be interpretable, such as networks with monotonicity constraints or prototype networks.

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