Aesthetic Discrimination of Graph Layouts

Authors

  • Tamara Mchedlidze
  • Alexey Pak
  • Moritz Klammler

DOI:

https://doi.org/10.7155/jgaa.00501

Keywords:

aesthetics , graph drawing , machine learning , quality metrics

Abstract

This paper addresses the following basic question: given two layouts of the same graph, which one is more aesthetically pleasing? We propose a neural network-based discriminator model trained on a labeled dataset that decides which of two layouts has a higher aesthetic quality. The feature vectors used as inputs to the model are based on known graph drawing quality metrics, classical statistics, information-theoretical quantities, and two-point statistics inspired by methods of condensed matter physics. The large corpus of layout pairs used for training and testing is constructed using force-directed drawing algorithms and the layouts that naturally stem from the process of graph generation. It is further extended using data augmentation techniques. Our model demonstrates a mean prediction accuracy of $97.58\%$, outperforming discriminators based on stress and on the linear combination of popular quality metrics by a margin of $2$ to $3\%$. The present paper extends our contribution to the Proceedings of the 26th International Symposium on Graph Drawing and Network Visualization (GD 2018) and is based on a significantly larger dataset.

Downloads

Download data is not yet available.

Downloads

Published

2019-09-01

How to Cite

Mchedlidze, T., Pak, A., & Klammler, M. (2019). Aesthetic Discrimination of Graph Layouts. Journal of Graph Algorithms and Applications, 23(3), 525–552. https://doi.org/10.7155/jgaa.00501