Authors
Stephen Bonner, John Brennan, Georgios Theodoropoulos, Ibad Kureshi, Andrew Stephen McGough
Publication date
2016/12/5
Conference
2016 IEEE International Conference on Big Data (Big Data)
Pages
3290-3297
Publisher
IEEE
Description
The classification of graphs is a key challenge within many scientific fields using graphs to represent data and is an active area of research. Graph classification can be critical in identifying and labelling unknown graphs within a dataset and has seen application across many scientific fields. Graph classification poses two distinct problems: the classification of elements within a graph and the classification of the entire graph. Whilst there is considerable work on the first problem, the efficient and accurate classification of massive graphs into one or more classes has, thus far, received less attention. In this paper we propose the Deep Topology Classification (DTC) approach for global graph classification. DTC extracts both global and vertex level topological features from a graph to create a highly discriminate representation in feature space. A deep feed-forward neural network is designed and trained to classify these …
Total citations
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Scholar articles
S Bonner, J Brennan, G Theodoropoulos, I Kureshi… - 2016 IEEE International Conference on Big Data (Big …, 2016