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Study mode:
on
1
Introduction
2
Why
3
How
4
Questions
5
Graph Limits
6
Convergence
7
Results
8
Transferability
9
Multirobot Consensus
10
Technical Part
11
Graphic Convolutions
12
Graphs
13
Definitions
14
Frequency representation
15
Review
16
Transferability Analysis
17
Graph Neural Networks
18
Graph Filters vs Graph Neural Networks
19
Demodulation Trick
20
Conclusion
21
Graphone Convolution
22
Designing Graphs
Description:
Explore the concept of learning by transference in large graphs through this IEEE Signal Processing Society webinar presented by Alejandro Ribeiro from UPenn. Delve into topics such as graph limits, convergence results, transferability, and multirobot consensus. Examine technical aspects including graphic convolutions, graph definitions, frequency representation, and graph neural networks. Gain insights into the demodulation trick, graphone convolution, and graph design. Understand the importance of this subject in the context of data science on graphs and its applications in signal processing.

Learning by Transference in Large Graphs

IEEE Signal Processing Society
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