The aim of this project is to propose a turnkey implementation of the main multi-criteria decision-support tools.
This project was created by Marin CHEVOLLEAU helped by Tristan MANIER.
- pandas
- typing
- networkx
- matplotlib
├─ 📒 data → input datasets (example of cities to rank)
├─ 📒 output → csv result files
├─ 📜 README.md → This file
├─ 🐍 criterion.py → criterion class
├─ 🐍 normalize.py → normalize function
├─ 🐍 dominance.py → find the dominant pareto solutions
├─ 🐍 satisfaction.py → find satisfying solutions according to the decision-maker needs
├─ 🐍 electre_1.py → plot ranking graph using Electre 1 method
├─ 🐍 topsis.py → rank solutions using TOPSIS method
└─ 🐍 weighting.py → rank solutions using weighted sum method
Run the main script main.py
.
Uncomment lines to select the satisfaction or dominance method to use.
First you need to run python3 dominance.py
OR python3 satisfaction.py
Then you can use the following (independant) scripts:
python3 weighting.py
python3 electre_1.py
python3 electre_2.py
python3 topsis.py