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YZ Sözlüğü

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kategoriler
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alt kategoriler
23.060
terimler
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terimler

XAI (Explainable AI)

Set of techniques and methods that make artificial intelligence systems understandable to humans, transforming complex decision-making processes into interpretable explanations.

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Local interpretability

Ability to explain a model's prediction for a specific instance, identifying the features that influenced this particular decision.

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Global interpretability

Overall understanding of an AI model's behavior, explaining how it makes decisions in general across the entire dataset.

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Black box

AI system whose internal functioning is opaque or incomprehensible to humans, making it difficult to explain its decisions and reasoning processes.

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LIME (Local Interpretable Model-agnostic Explanations)

Interpretation technique that explains individual predictions by creating simple local models that approximate the behavior of the complex model around a specific prediction.

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SHAP (SHapley Additive exPlanations)

Game theory-based explanation method that quantifies the impact of each feature on the final prediction by fairly distributing credit among all features.

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Decision traceability

Ability to track and document each step of an AI system's decision-making process, from input data to final result, to ensure auditability.

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AI auditability

Possibility to systematically examine an AI system to assess its compliance with standards, regulations, and ethical requirements, particularly regarding bias and discrimination.

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Model explainability

Ability of an AI system to provide understandable and coherent justifications for its decisions, allowing users to understand the underlying reasoning.

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Feature importance

Quantitative measure of the influence of each input variable on the model's predictions, allowing to identify the most determining factors in decision-making.

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Decision visualization

Graphical techniques representing the decision process of an AI model, allowing users to intuitively understand how predictions are generated.

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Meta-explanations

Second-level explanations that describe why the AI model produces certain explanations rather than others, increasing confidence in the explanatory system itself.

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Automated reports

Systems automatically generating detailed reports explaining AI decisions, including the data used, the reasoning followed, and confidence levels.

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Human validation

Process by which human experts review and validate the explanations provided by AI systems to ensure their relevance and accuracy.

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Model documentation

Structured and complete recording of the characteristics, performance, limitations, and behaviors of an AI model to ensure its transparency and reusability.

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Bias diagnosis

Systematic analysis of a model's decisions to identify, quantify, and understand potential discriminations based on protected or sensitive characteristics.

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Attention heat maps

Visualizations showing the areas or features on which an AI model particularly focuses to make its decision, facilitating the understanding of its reasoning.

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