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

Machine Learning Street Talk (MLST)

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Exploring Non-Euclidean Learning and Symmetries in Neural Networks

This chapter discusses the application of non-Euclidean geometry and geometric deep learning in social networks and varied data types. The speakers highlight the importance of symmetries in manifolds and how these insights can enhance neural network efficiency and machine learning applications.

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