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An Unpooling Layer for Graph Generation
Yinglong Guo
, Dongmian Zou
,
Gilad Lerman
School of Mathematics
Research output
:
Contribution to journal
›
Conference article
›
peer-review
1
Scopus citations
Overview
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Computer Science
Experimental Evidence
100%
Generative Adversarial Networks
100%
Connected Graph
100%
Variational Autoencoder
100%
Keyphrases
Graph Generation
100%
Unpooling
100%
Decoder
16%
Competitive Performance
16%
Trainable
16%
Connected Graph
16%
Node Graph
16%
Generative Adversarial Networks
16%
Variational Autoencoder
16%
Engineering
Real Data
100%
Graph Node
100%
Variational Autoencoder
100%