The Extension of Graph Convolutional Neural Network with Capsule Network for Graph Classification
Journal: International Journal of Advanced Engineering Research and Science (Vol.6, No. 1)Publication Date: 2019-01-05
Authors : Jean de DIEU TUGIRIMANA Janvier RULINDA Antoine NZARAMBA;
Page : 79-84
Keywords : Capsule Network; Graph Convolutional neural networks.;
Abstract
In this paper we extend a graph convolutional neural network (GCNNs) which is the one of the existing state-of-art deep learning methods using the notion of capsule networks for graph classification. Through experiments, we show that by extending GCNNs using capsule networks can significantly overcome the challenges of GCNNs for the task of graph classification.
Other Latest Articles
- Information and Communication Technologies (ICTS), Dance, and Interdisciplinary: Laconics Notes
- Development of a Self-Manageable News Virtual Environment
- FEATURES OF FORMATION MOTIVATION SECTOR OF TEACHING ADOLESCENTS
- PSYCHOLOGICAL MAINTENANCE OF THE PROFESSIONAL SELF‐ DETERMINATION FORMATION OF THE VOCATIONAL SCHOOLS STUDENTS
- PSYCHOLOGICAL FACTORS OF PERSONAL PREPAREDNESS OF THE TEACHER OF THE POST‐DIPLOMATIC PEDAGOGICAL EDUCATION TO THE PROFESSIONAL ACTIVITY UNDER CONDITIONS OF CHANGES
Last modified: 2019-01-22 00:41:11