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💬 프롬프트 라이브러리 📖 AI 용어 사전 🔗 유용한 링크

AI 용어집

인공지능 완전 사전

162
카테고리
2,032
하위 카테고리
23,060
용어
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용어

Intrinsic Explanation

Approach where interpretability is directly integrated into the model's structure from its design, making the model naturally transparent.

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Black Box Model

AI system whose internal workings are opaque or complex, making it difficult to directly understand its decision-making mechanisms.

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White Box Model

Intrinsically transparent model whose internal mechanisms and decision processes are directly observable and understandable.

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Sensitivity Analysis

Post-hoc technique evaluating how variations in input features affect the model's predictions to identify influential factors.

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Naturally Interpretable Model

Intrinsic architecture designed to be transparent, such as decision trees or linear regression, not requiring external explanations.

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Local Approximation

Post-hoc approach explaining a specific prediction by creating a simple model that approximates the complex model's behavior only in the neighborhood of that prediction.

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Global Approximation

Post-hoc method aiming to create a simplified model that mimics the general behavior of the complex model across its entire input space.

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Perturbation Method

Post-hoc technique analyzing the impact on predictions by systematically modifying input features to understand their role in the decision.

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Saliency Map

Post-hoc visualization showing the most influential regions or features in the input data for a specific model prediction.

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Interpretable Decision Tree

Intrinsic model using a hierarchical structure of if-then rules to make decisions, offering complete traceability of reasoning.

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Counterfactual Analysis

Post-hoc method identifying the minimal changes needed in input features to change the model's prediction to a different outcome.

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Proxy Model

Simple and interpretable model trained post-hoc to mimic the behavior of a complex model, serving as an approximation to facilitate interpretation.

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Interpretable Hybrid Model

Intrinsic architecture combining complex components with built-in interpretation mechanisms to balance performance and transparency.

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용어

Feature Attribution

Post-hoc process assigning contribution scores to each input feature to explain their individual role in a specific prediction.

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