This collection of Python3 modules provides a large range of implemented decision aiding algorithms useful in the field of outranking digraphs based Multiple Criteria Decision Aid (MCDA), especially best choice, linear ranking and absolute or relative rating algorithms with multiple incommensurable criteria. Technical documentation and tutorials are available under the following link:
https://digraph3.readthedocs.io/en/latest/
The tutorials introduce the main objects like digraphs, outranking digraphs and performance tableaux. There is also a tutorial provided on undirected graphs. Some tutorials are problem oriented and show how to compute the winner of an election, how to build a best choice recommendation, or how to
linearly rank or rate with multiple incommensurable performance criteria. Other tutorials concern more specifically operational aspects of computing maximal independent sets (MISs) and kernels in graphs and digraphs.

Features

  • Algorithmic Decision Theory
  • Bipolar outranking digraphs
  • Selection, ranking and rating algorithms
  • Multiple incommensurable criteria decision aid
  • Computational epistemic {-1,0,1}-valued logic

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License

GNU General Public License version 3.0 (GPLv3)

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Additional Project Details

Operating Systems

Linux, Mac

Intended Audience

Education, Information Technology, Science/Research

Programming Language

Python

Related Categories

Python Algorithms, Python Mathematics Software, Python Voting Software

Registered

2018-06-04