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047 Interpretable Machine Learning - Christoph Molnar

Machine Learning Street Talk (MLST)

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Navigating Interpretability in Machine Learning

This chapter explores the intricate challenges of creating interpretable machine learning models, balancing performance with transparency. It highlights the evolution of interpretability techniques, particularly focusing on Shapley values, and contrasts them with methods like LIME. Additionally, the discussion delves into the historical context and fundamental concepts necessary for understanding and applying these methods effectively.

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