Summary of several graph neural network methods


Methods of Graph Neural Networks



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Methods of Graph Neural Networks

A basic idea of ​​graph neural network is to embed nodes based on their local neighbor information. Intuitively speaking, the information of each node and its surrounding nodes is aggregated through a neural network. The aim of a GNN is for each node in the graph to learn an embedding containing information about its neighborhood (nodes directly connected to the target node via edges). This embedding can then be used for different problems like node labelling, node prediction, edge prediction, etc.



Thus, after having embeddings associated with each node, we can convert edges by adding feed forward neural network layers and combine graphs and neural networks.

The need for graph neural networks arose from the fact that a lot of data available to us is in an unstructured format. Unstructured data is data that has not been processed or does not have a pre-defined format which makes it difficult to analyze. Examples of such data are audio, emails, and social media postings. To make sense of this data and to derive inferences from it, we need a structure that defines a relationship between these unstructured data points. The existing machine learning architectures and algorithms do not seem to perform well with these kinds of data. The primary advantages of graph neural networks are:



  1. The graph data structure has proven tremendously successful in the field of computer science while working with unstructured data.

  2. Graphs are helpful in defining concepts which are abstract, like relationships between entities. Since each node in the graph is defined by its connections and neighbors, graph neural networks can capture the relationships between nodes in an efficient manner.

Thus, developing GNNs for handling data like social network data, which is highly unstructured, is an exciting amalgamation of graphs and machine learning which holds a lot of potential.

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