Algorithms for data visualizations are essential tools for transforming data into useful narratives. Unfortunately, very few visualization algorithms can handle the large datasets of many real-world scenarios. In this study, we address the visualization of these datasets as a Multi-Objective Optimization Problem. We propose M Q A P V I Z, a divide-and-conquer multi-objective optimization algorithm to compute large-scale data visualizations. Our method employs the Multi-Objective Quadratic Assignment Problem (mQAP) as the mathematical foundation to solve the visualization task at hand. The algorithm applies advanced sampling techniques originating from the field of machine learning and efficient data structures to scale to millions of data objects. The algorithm allocates objects onto a 2D grid layout. Experimental results on real-world and large datasets demonstrate that M Q A P V I Z is a competitive alternative to existing techniques.
History
Source title
GECCO '18 Proceedings of the Genetic and Evolutionary Computation Conference
Name of conference
Genetic and Evolutionary Computation Conference (GECCO'18)
Location
Kyoto, Japan
Start date
2018-07-15
End date
2018-07-19
Pagination
737-744
Publisher
Association for Computing Machinery
Place published
New York, NY
Language
en, English
College/Research Centre
Faculty of Engineering and Built Environment
School
School of Electrical Engineering and Computer Science