JOURNAL ARTICLE

Exploring convolutional auto-encoders for representation learning on networks

Pranav NerurkarMadhav ChandaneSunil Bhirud

Year: 2019 Journal:   Computer Science Vol: 20 (3)Pages: 350-350   Publisher: Wydawnictwa AGH

Abstract

A multitude of important real-world or synthetic systems possess network structure. Extending learning techniques such as neural networks to process such non-euclidean data is therefore an important direction for machine learning research. However, till very recently this domain has received comparatively low levels of attention. There is no straight forward application of machine learning to network data as machine learning tools are designed for $i.i.d$ data, simple euclidean data or grids. To address this challenge the technical focus of this dissertation is on use of graph neural networks for Network Representation Learning (NRL) i.e. learning vector representations of nodes in networks. Learning vector embeddings of graph-structured data is similar to embedding complex data into low-dimensional geometries. After the embedding process is completed, drawbacks associated with graph structured data are overcome. The current inquiry proposes two deep learning auto-encoder based approaches for generating node embeddings. The drawbacks in existing auto-encoder approaches such as shallow architectures and excessive parameters are tackled in the proposed architectures using fully convolutional layers. Extensive experiments are performed on publicly available benchmark network data-sets to highlight the validity of this approach.

Keywords:
Computer science Artificial intelligence Machine learning Embedding Feature learning Deep learning Convolutional neural network Graph External Data Representation Benchmark (surveying) Autoencoder Theoretical computer science Representation (politics) Encoder

Metrics

6
Cited By
0.46
FWCI (Field Weighted Citation Impact)
53
Refs
0.71
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Advanced Graph Neural Networks
Physical Sciences →  Computer Science →  Artificial Intelligence
Complex Network Analysis Techniques
Physical Sciences →  Physics and Astronomy →  Statistical and Nonlinear Physics
Graph Theory and Algorithms
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition

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