Explainability and Interpretability in AI
Published On: 20 Mar 2025
Reading Time: 7 minutes
Overview
- What is Interpretability?
- What is Explainability?
- Key Differences Between Interpretability and Explainability
- Why are Explainability and Interpretability Important?
- Techniques for Achieving Explainability and Interpretability
- Inherently Interpretable Models
- Post-Hoc Explainability Methods
- Model Simplification
- Challenges in Explainable and Interpretable AI
- The Future of Explainable and Interpretable AI
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