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#81 JULIAN TOGELIUS, Prof. KEN STANLEY - AGI, Games, Diversity & Creativity [UNPLUGGED]

Machine Learning Street Talk (MLST)

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The role of gradient methods and diversity in learning algorithms

Gradient methods have advantages in efficiency but can be combined with diversity for a more comprehensive approach. The future of learning algorithms will involve operating on multiple scales and maintaining diversity. This may involve undirected mutation and gradient descent search. New dimensions may appear or collapse during the search, and human interaction may play a role in guiding the search.

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