Discrete representations of continuous data using deep learning and clustering
<p>The divide between continuous and discrete data is a fundamental one in computer science and mathematics, as well as related areas such as cognitive science. Historically, most of computing has operated in the discrete domain, but connectionism offers an alternative set of techniques for re...
Auteur principal: | Mahon, L |
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Autres auteurs: | Lukasiewicz, T |
Format: | Thèse |
Langue: | English |
Publié: |
2022
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Sujets: |
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