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![Integrated DGNN structure of EvolveGCN with an EGCU-O layer [16]. The ...](https://www.researchgate.net/publication/351834254/figure/fig5/AS:1027221732995076@1621920154942/Integrated-DGNN-structure-of-EvolveGCN-with-an-EGCU-O-layer-16-The-EGCU-O-layer_Q640.jpg)
![Integrated DGNN structure of EvolveGCN with an EGCU-O layer [16]. The ...](https://www.researchgate.net/publication/351834254/figure/fig4/AS:1027221733003264@1621920154352/Stacked-DGNN-structure-from-Manessi-et-al-76-The-graph-convolution-layer-GC-encode_Q640.jpg)












































![[图表示学习] 2 动态图(Dynamic Graph)最新研究总结(2020) - 知乎](https://pic3.zhimg.com/v2-9dae3cfa982e6e0a17379d5cdc224062_r.jpg)








![[图表示学习] 2 动态图(Dynamic Graph)最新研究总结(2020) - 知乎](https://pic2.zhimg.com/v2-36cb4cc6516e67e13de95f29a12b4fdd_r.jpg)




















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