NodeNet: A Graph Regularised Neural Network for Node Classification
- URL: http://arxiv.org/abs/2006.09022v1
- Date: Tue, 16 Jun 2020 09:41:58 GMT
- Title: NodeNet: A Graph Regularised Neural Network for Node Classification
- Authors: Shrey Dabhi and Manojkumar Parmar
- Abstract summary: Most AI/ML techniques leave out the linkages among data points.
Recent surge of interest in graph-based AI/ML techniques is aimed to leverage the linkages.
We propose a model using NGL - NodeNet, to solve node classification task for citation graphs.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Real-world events exhibit a high degree of interdependence and connections,
and hence data points generated also inherit the linkages. However, the
majority of AI/ML techniques leave out the linkages among data points. The
recent surge of interest in graph-based AI/ML techniques is aimed to leverage
the linkages. Graph-based learning algorithms utilize the data and related
information effectively to build superior models. Neural Graph Learning (NGL)
is one such technique that utilizes a traditional machine learning algorithm
with a modified loss function to leverage the edges in the graph structure. In
this paper, we propose a model using NGL - NodeNet, to solve node
classification task for citation graphs. We discuss our modifications and their
relevance to the task. We further compare our results with the current state of
the art and investigate reasons for the superior performance of NodeNet.
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