Deep Learning and Geometric Deep Learning: an introduction for mathematicians and physicists
In this expository paper we want to give a brief introduction, with few key references for further reading, to the inner functioning of the new and successfull algorithms of Deep Learning and Geometric Deep Learning with a focus on Graph Neural Networks. We go over the key ingredients for these algo...
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Zusammenfassung: | In this expository paper we want to give a brief introduction, with few key
references for further reading, to the inner functioning of the new and
successfull algorithms of Deep Learning and Geometric Deep Learning with a
focus on Graph Neural Networks. We go over the key ingredients for these
algorithms: the score and loss function and we explain the main steps for the
training of a model. We do not aim to give a complete and exhaustive treatment,
but we isolate few concepts to give a fast introduction to the subject. We
provide some appendices to complement our treatment discussing Kullback-Leibler
divergence, regression, Multi-layer Perceptrons and the Universal Approximation
Theorem. |
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DOI: | 10.48550/arxiv.2305.05601 |