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This is code for finding the minimax/nash/stackelberg strategy of players in Markov Games.

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sailik1991/MarkovGameSolvers

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About this code-base

This code was mostly written for papers presented at AAAI-19 AICS and GameSec-19. This code can compute the min-max strategies for both the players participating in a two-player zero-sum Markov Game. As the game has a zero-sum structure, the code also give you the nash and stackelberg equilibrium of the Markov Game (which is equal to the min-max equilibirum).

New addition: Compute the the Nash or the Strong Stackelberg Eq. strategies for a general-sum Markov Game.

How to use it

To run code, manuver to the appropriate folder and run agents.py. The set of commands that one can use to do this starting at the root folder are:

cd ./src/zero-sum
python agents.py

OR

cd ./src/general-sum
python agents.py

For using the min-max agent which computes the optimal markov game strategy for the players, you will need to have gurobi installed. Gurobi comes with a free academic license and can be installed into anaconda in 3 simple steps (see this link).

Considerations if it helps you

If you use this for code for your research, we would appreciate if you cite our work. :)

  • Zero-sum
@article{chowdhary2018markov,
  title={Markov game modeling of moving target defense for strategic detection of threats in cloud networks},
  author={Chowdhary, Ankur and Sengupta, Sailik and Huang, Dijiang and Kambhampati, Subbarao},
  journal={AAAI Workshop on Artificial Intelligence for Cyber Security (AICS)},
  year={2019}
}
  • General-sum
@inproceedings{sengupta2019general,
  title={General Sum Markov Games for Strategic Detection of Advanced Persistent Threats using Moving Target Defense in Cloud Networks},
  author={Sengupta, Sailik and Chowdhary, Ankur and Huang, Dijiang and Kambhampati, Subbarao},
  booktitle={International Conference on Decision and Game Theory for Security},
  pages={492--512},
  year={2019},
  organization={Springer}
}

Contact

If you are interested in collaboration/clarification or feel there is a correction that needs to be made, please send me a email at sailik.cse.jdvu {at} gmail {dot} com.

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This is code for finding the minimax/nash/stackelberg strategy of players in Markov Games.

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