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[NEW REQUEST] Explainability & Interpretability #152

@Viky397

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@Viky397

Book

responsible_ai

Pocket Reference Title

Explainability & Interpretability

Proposed Content

Interpretability: Understanding how a model makes decisions
Explainability: Understanding why a model made a specific decision
The difference between transparency, interpretability, and explainability
When is it necessary.

Rationale

It bridges the gap between technical complexity and practical decision-making in AI development.

Content Types

  • Theoretical foundations
  • Mathematical formulations
  • Code examples
  • Diagrams/visualizations
  • Practical applications
  • Common pitfalls/challenges

Additional Resources

LIME – Ribeiro et al., “Why Should I Trust You?”

SHAP – Lundberg & Lee, “A Unified Approach to Interpreting Model Predictions”

"Explainable Artificial Intelligence: A Survey of Needs, Techniques, Applications, and Future Direction"
Mersha et al., 2024

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