Affiliation:
1. US National Security Agency, USA
Abstract
The increasing size of Big Data is often heralded but how data are transformed and represented is also profoundly important to knowledge discovery, and this is exemplified in Big Graph analytics. Much attention has been placed on the scale of the input graph but the product of a graph algorithm can be many times larger than the input. This is true for many graph problems, such as listing all triangles in a graph. Enabling scalable graph exploration for Big Graphs requires new approaches to algorithms, architectures, and visual analytics. A brief tutorial is given to aid the argument for thoughtful representation of data in the context of graph analysis. Then a new algebraic method to reduce the arithmetic operations in counting and listing triangles in graphs is introduced. Additionally, a scalable triangle listing algorithm in the MapReduce model will be presented followed by a description of the experiments with that algorithm that led to the current largest and fastest triangle listing benchmarks to date. Finally, a method for identifying triangles in new visual graph exploration technologies is proposed.
Subject
Computer Vision and Pattern Recognition
Reference26 articles.
1. Burkhardt P, Waring CA. An NSA big graph experiment. Technical Report NSA-RD-2013-056001v1, US National Security Agency, 2013.
2. Collective dynamics of ‘small-world’ networks
Cited by
10 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. Triangle Centrality;ACM Transactions on Knowledge Discovery from Data;2024-07-31
2. INFINEL: An efficient GPU-based processing method for unpredictable large output graph queries;Proceedings of the 29th ACM SIGPLAN Annual Symposium on Principles and Practice of Parallel Programming;2024-02-20
3. Complex Networks Exploration With Triangles;2023 IEEE International Conference on Big Data (BigData);2023-12-15
4. Triangle Counting Through Cover-Edges;2023 IEEE High Performance Extreme Computing Conference (HPEC);2023-09-25
5. Visual Analytics and Human Involvement in Machine Learning;Machine Learning for Data Science Handbook;2023