Evoplex: A platform for agent-based modeling on networks
November 25, 2018 Β· Entered Twilight Β· π SoftwareX
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Repo contents: .appveyor.yml, .bettercodehub.yml, .codecov.yml, .github, .gitignore, .travis.yml, CHANGELOG.md, CMakeLists.txt, CODE_OF_CONDUCT.md, CONTRIBUTING.md, CREDITS.md, README.md, src
Authors
Marcos Cardinot, Colm O'Riordan, Josephine Griffith, MatjaΕΎ Perc
arXiv ID
1811.10116
Category
cs.MA: Multiagent Systems
Cross-listed
cs.NE,
physics.soc-ph
Citations
20
Venue
SoftwareX
Repository
https://github.com/evoplex/evoplex
β 146
Last Checked
10 days ago
Abstract
Agent-based modeling and network science have been used extensively to advance our understanding of emergent collective behavior in systems that are composed of a large number of simple interacting individuals or agents. With the increasing availability of high computational power in affordable personal computers, dedicated efforts to develop multi-threaded, scalable and easy-to-use software for agent-based simulations are needed more than ever. Evoplex meets this need by providing a fast, robust and extensible platform for developing agent-based models and multi-agent systems on networks. Each agent is represented as a node and interacts with its neighbors, as defined by the network structure. Evoplex is ideal for modeling complex systems, for example in evolutionary game theory and computational social science. In Evoplex, the models are not coupled to the execution parameters or the visualization tools, and there is a user-friendly graphical interface which makes it easy for all users, ranging from newcomers to experienced, to create, analyze, replicate and reproduce the experiments.
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