Poster
[Re] Graph Edit Networks
Vid Stropnik · Maruša Oražem
Hall J (level 1) #1003
Keywords: [ ReScience - MLRC 2021 ] [ Journal Track ]
The studied paper proposes a novel output layer for graph neural networks (the graph edit network - GEN). The objective of this reproduction is to assess the possibility of its re-implementation in the Python programming language and the adherence of the provided code to the methodology, described in the source material. Additionally, we rigorously evaluate the functions used to create the synthetic data sets, on which the models are evaluated. Finally, we also pay attention to the claim that the proposed architecture scales well to larger graphs.