April 1, 2024, 12:31 p.m. | Machine Learning Street Talk

Machine Learning Street Talk www.youtube.com

Dr. Paul Lessard and his collaborators have written a paper on "Categorical Deep Learning and Algebraic Theory of Architectures". They aim to make neural networks more interpretable, composable and amenable to formal reasoning. The key is mathematical abstraction, as exemplified by category theory - using monads to develop a more principled, algebraic approach to structuring neural networks.

We also discussed the limitations of current neural network architectures in terms of their ability to generalise and reason in a human-like way. …

abstraction aim architectures categorical deep learning key networks neural networks paper reasoning the key theory

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