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#036 - Max Welling: Quantum, Manifolds & Symmetries in ML

Machine Learning Street Talk (MLST)

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Balancing Knowledge and Data in Machine Learning

This chapter discusses the critical tension between data-driven methodologies and the incorporation of prior knowledge in machine learning models. It explores concepts such as the bias-variance trade-off, the potential for artificial general intelligence, and the implications of inductive biases on model performance. Additionally, the chapter delves into advanced topics like capsule networks, symmetry in representation, and the impact of hardware advancements on the evolution of machine learning techniques.

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