2min chapter

Machine Learning Street Talk (MLST) cover image

047 Interpretable Machine Learning - Christoph Molnar

Machine Learning Street Talk (MLST)

CHAPTER

The Problem With Interpretability in Machine Learning

There's no definition of IML methods to start with, but at least in machine learning methods, we have ground truth. But if we if we can't quantify how good an explanation is, then where are we really? Because you talk about a kind of taxonomy of interpretability methods. You say that there are objective evaluations like sparsity and interaction, strength and fidelity,. And human, human-centered evaluations, which might come from domain experts or laypeople.

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