Interpretable machine learning in Physics

11 Mar 2022  ·  Christophe Grojean, Ayan Paul, Zhuoni Qian, Inga Strümke ·

Adding interpretability to multivariate methods creates a powerful synergy for exploring complex physical systems with higher order correlations while bringing about a degree of clarity in the underlying dynamics of the system.

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