arXiv Open Access 2021

Deep Neural Network for DrawiNg Networks, (DNN)^2

Loann Giovannangeli Frederic Lalanne David Auber Romain Giot Romain Bourqui
Lihat Sumber

Abstrak

By leveraging recent progress of stochastic gradient descent methods, several works have shown that graphs could be efficiently laid out through the optimization of a tailored objective function. In the meantime, Deep Learning (DL) techniques achieved great performances in many applications. We demonstrate that it is possible to use DL techniques to learn a graph-to-layout sequence of operations thanks to a graph-related objective function. In this paper, we present a novel graph drawing framework called (DNN)^2: Deep Neural Network for DrawiNg Networks. Our method uses Graph Convolution Networks to learn a model. Learning is achieved by optimizing a graph topology related loss function that evaluates (DNN)^2 generated layouts during training. Once trained, the (DNN)^ model is able to quickly lay any input graph out. We experiment (DNN)^2 and statistically compare it to optimization-based and regular graph layout algorithms. The results show that (DNN)^2 performs well and are encouraging as the Deep Learning approach to Graph Drawing is novel and many leads for future works are identified.

Topik & Kata Kunci

Penulis (5)

L

Loann Giovannangeli

F

Frederic Lalanne

D

David Auber

R

Romain Giot

R

Romain Bourqui

Format Sitasi

Giovannangeli, L., Lalanne, F., Auber, D., Giot, R., Bourqui, R. (2021). Deep Neural Network for DrawiNg Networks, (DNN)^2. https://arxiv.org/abs/2108.03632

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Informasi Jurnal
Tahun Terbit
2021
Bahasa
en
Sumber Database
arXiv
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Open Access ✓