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Tong, 2019 - Google Patents

What is Geometric Deep Learning

Tong, 2019

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Document ID
10921754973263838142
Author
Tong F
Publication year

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Abstract Machine Learning on graphs and manifolds are important ubiquitous tasks with applications ranging from network analysis to 3D shape analysis. Traditionally, machine learning approaches relied on user-defined heuristics to extract features encoding structural …
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