Automatic model selection for fully connected neural networks

2020 ◽  
Vol 8 (4) ◽  
pp. 1063-1079 ◽  
Author(s):  
David Laredo ◽  
Shangjie Frank Ma ◽  
Ghazaale Leylaz ◽  
Oliver Schütze ◽  
Jian-Qiao Sun
Author(s):  
Ezequiel López-Rubio ◽  
Juan Miguel Ortiz-de-Lazcano-Lobato ◽  
Domingo López-Rodríguez ◽  
María del Carmen Vargas-González

2005 ◽  
Vol 38 (10) ◽  
pp. 1733-1745 ◽  
Author(s):  
N.E. Ayat ◽  
M. Cheriet ◽  
C.Y. Suen

Author(s):  
Ziyu Wang ◽  
Jiahai Yang ◽  
Shize Zhang ◽  
Chenxi Li ◽  
Hui Zhang

2021 ◽  
Vol 6 (1) ◽  
Author(s):  
Hussain Hussain ◽  
Tomislav Duricic ◽  
Elisabeth Lex ◽  
Denis Helic ◽  
Roman Kern

AbstractGraph Neural Networks (GNNs) are effective in many applications. Still, there is a limited understanding of the effect of common graph structures on the learning process of GNNs. To fill this gap, we study the impact of community structure and homophily on the performance of GNNs in semi-supervised node classification on graphs. Our methodology consists of systematically manipulating the structure of eight datasets, and measuring the performance of GNNs on the original graphs and the change in performance in the presence and the absence of community structure and/or homophily. Our results show the major impact of both homophily and communities on the classification accuracy of GNNs, and provide insights on their interplay. In particular, by analyzing community structure and its correlation with node labels, we are able to make informed predictions on the suitability of GNNs for classification on a given graph. Using an information-theoretic metric for community-label correlation, we devise a guideline for model selection based on graph structure. With our work, we provide insights on the abilities of GNNs and the impact of common network phenomena on their performance. Our work improves model selection for node classification in semi-supervised settings.


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