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Supervised machine learning for science with Christoph Molnar and Timo Freiesleben, Part 2

The AI Fundamentalists

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Unlocking Causality in Machine Learning

This chapter explores the role of causality in enhancing the robustness and interpretability of machine learning models. It discusses various applications of causal models, the challenges of causal discovery, and the implications of deep learning in understanding causal relationships. The speakers emphasize the need for a theoretical framework to connect model insights back to original research questions while advocating for model-agnostic methods for better interpretability.

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