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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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Prototype Critique

Representative example that negatively influences a model's prediction, identified to understand cases where the model fails or produces counter-intuitive results.

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k-Prototypes Method

Hybrid clustering algorithm combining k-means for numerical variables and k-modes for categorical variables, used to identify prototypes in mixed data.

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Counterfactual Example

Minimally modified instance that changes the model's prediction, complementary to prototypes by explaining what would need to be changed to obtain a different result.

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Prototype Similarity Map

Visualization showing how a new prediction relates to learned prototypes, facilitating the interpretation of model decisions by analogy.

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Density-Based Prototype Selection

Method identifying prototypes in high-density regions of the data space, ensuring that representative examples are statistically significant.

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MMD Method (Maximum Mean Discrepancy)

Statistical test used to measure the difference between distributions, applied to prototype selection to ensure they adequately cover the data space.

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Explanation by Analogy

Explanation paradigm where a prediction is justified by its similarity to known prototypes, making complex decisions more intuitive for humans.

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Maximum Margin Prototype

Prototype selected to maximize the decision distance from class boundaries, providing the most representative and unambiguous examples.

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Prototype Neural Network (ProtoNN)

Neural network architecture that explicitly learns a set of prototypes for classification, offering intrinsic interpretability by design.

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Prototype Coreset

Minimal subset of prototypes preserving the geometric properties of the complete dataset, optimizing explanation efficiency without loss of relevance.

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Medoid Method

Variant of k-means where cluster centers are actual data points (medoids), ensuring that prototypes are concrete and interpretable examples.

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Feature Weighting by Prototype

Technique assigning weights to features specific to each prototype, clarifying which aspects are most important for each type of representative example.

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Prototype Cross-Validation

Process of evaluating the robustness of prototype-based explanations by testing their stability on different subsets of training data.

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Hybrid Prototype

Representative example combining characteristics from multiple real instances, created to synthesize the most relevant traits of a class or concept.

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Elbow Method for Prototypes

Heuristic technique determining the optimal number of prototypes by identifying the point where adding new examples no longer significantly improves coverage.

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Local Explanation by Prototype

Approach explaining an individual prediction by associating it with the most similar prototype, providing contextual and case-specific justification.

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