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Glosarium AI

Kamus lengkap Kecerdasan Buatan

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XAI (Explainable AI)

Set of techniques and methods aimed at making the decisions of artificial intelligence systems understandable by humans, essential for trust and acceptability.

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Interpretability

Ability of a model to present its decisions in a way understandable to humans, distinguished from transparency which concerns the understanding of the internal mechanism.

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Post-hoc explanations

Explanation methods applied after model training without modifying its architecture, allowing to explain the predictions of black box models.

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SHAP (SHapley Additive exPlanations)

Theoretical approach based on game theory to assign the importance of each feature in a model's prediction in an additive and coherent manner.

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LIME (Local Interpretable Model-agnostic Explanations)

Local explanation technique that approximates the behavior of a complex model by a simple and interpretable model in the neighborhood of a specific prediction.

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Influence factors

Specific elements (items, attributes, past behaviors) that have directly contributed to the generation of a particular recommendation in a system.

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Counter-explanations

Explanations that justify why certain items were not recommended, helping users understand the limitations and exclusion criteria of the system.

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Causal justifications

Explanations based on cause-effect relationships between user actions and generated recommendations, rather than simple correlations.

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Knowledge-based approaches

Recommendation methods using ontologies or knowledge graphs to generate semantically rich and contextually relevant explanations.

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Explanation visualizations

Interactive graphical representations that transform algorithmic justifications into intuitive visual elements to facilitate user understanding.

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Explanation personalization

Adaptation of the content, style, and level of detail of explanations according to each user's profile, preferences, and expertise.

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Qualitative evaluations of explanations

Evaluation methods based on user studies, interviews, and content analysis to measure the relevance and perceived usefulness of explanations.

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Explanatory feedback

Mechanism allowing users to react to the provided explanations, thereby refining future recommendations and the quality of justifications.

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Explanatory complexity

Measure of the cognitive difficulty required to understand an explanation, evaluating the trade-off between technical accuracy and user accessibility.

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Algorithmic transparency

Principle of revealing the underlying mechanisms, data, and logic of a recommendation system to ensure its traceability and auditability.

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Algorithmic trust

Level of credibility and reliability perceived by users towards a system, directly influenced by the quality and relevance of the provided explanations.

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Intrinsic explanations

Models designed from their conception to be interpretable, natively integrating explanation capabilities unlike post-hoc approaches.

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Explanatory association rules

Sets of logical rules (IF-THEN) that justify recommendations by showing the discovered relationships between behaviors and items.

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Explanatory bias

Systematic distortions in generated explanations that may over-represent certain factors or minimize others, affecting the fair perception of the system.

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