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Contributed Talk 1: The Volume of Non-Restricted Boltzmann Machines and Their Double Descent Model Complexity
Prasad Cheema · Mahito Sugiyama
Prasad Cheema, Mahito Sugiyama
Author Information
Prasad Cheema (The University of Sydney)
PhD student at The University of Sydney, focused on applied use-cases of machine learning in the structural engineering field. I am slowly branching out towards more theoretical problems in machine learning, as I realized during my PhD that this is my primary interest.
Mahito Sugiyama (National Institute of Informatics)
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