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047 Interpretable Machine Learning - Christoph Molnar

Machine Learning Street Talk (MLST)

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The Challenges of Interpretability in Machine Learning

This chapter explores the complexities of interpretability in machine learning, emphasizing its importance for model transparency and societal acceptance. It addresses the challenges posed by model complexity and the pitfalls of current interpretability methods, highlighting the absence of statistical rigor and confidence estimates. The discussion advocates for a holistic and interdisciplinary approach to improve interpretability and understanding while considering its implications in real-world applications.

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