Graph Convolutional Networks, Graph
Conventional Networks are a generalised version of
Convolutional Neural Networks. They are an extension of
the generic convolutional operation and have the ability
to deal with non-Euclidean types of data and can easily
work with nodes and graphs to get features to learn and
train the networks. They have evolved over time and have
been applied to various domains. The techniques have
improved and the performance of the Graph
Convolutional Networks has been a great tool in the
domain of research. In this study, we present the
transformations and improvements of Graph
Convolutional Networks and analyse the variation of the
contrast between the traditional convolutional neural
network and the graph neural network. The different
applications have been discussed, adaptations have been
highlighted along with the limitations.
Keywords : Graph Convolutional Network.