Skip to content

wangjksjtu/rl-perturbed-reward

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

12 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

RL with Perturbed Rewards

This is the tensorflow implementation of Reinforcement Learning with Perturbed Rewards as described in the following AAAI 2020 paper (Spotlight):

@inproceedings{wang2020rlnoisy,
  title={Reinforcement Learning with Perturbed Rewards},
  author={Wang, Jingkang and Liu, Yang and Li, Bo},
  booktitle={AAAI},
  year={2020}
}

The implementation is based on keras-rl and OpenAI baselines frameworks. Thanks to the original authors!

  • gym-control: Classic control games
  • gym-atari: Atari-2600 games

Dependencies

  • python 3.5
  • tensorflow 1.10.0, keras 2.1.0
  • gym, scipy, scipy, joblib, keras
  • progressbar2, mpi4py, cloudpickle, opencv-python, h5py, pandas

Note: make sure that you have successfully installed the baseline package and other packages following (using virtualenvwrapper to create virtual environment):

mkvirtualenv rl-noisy --python==/usr/bin/python3
pip install -r requirements.txt
cd gym-atari/baselines
pip install -e .

Examples

  • Classic control (DQN on Cartpole)
cd gym-control
python cem_cartpole.py                                           # true reward
python dqn_cartpole.py --error_positive 0.1 --reward noisy       # perturbed reward
python dqn_cartpole.py --error_positive 0.1 --reward surrogate   # surrogate reward (estimated)
  • Atari-2600 (PPO on Phoenix)
cd gym-atari/baselines
python -m baselines.run --alg=ppo2 --env=PhoenixNoFrameskip-v4 \  # true reward
       --num_timesteps=5e7 --normal=True                          
python -m baselines.run --alg=ppo2 --env=PhoenixNoFrameskip-v4 \  # noisy reward
       --num_timesteps=5e7 --save_path=logs-phoenix/phoenix/ppo2_50M_noisy_0.2 \
       --weight=0.2 --normal=False --surrogate=False --noise_type=anti_iden
python -m baselines.run --alg=ppo2 --env=PhoenixNoFrameskip-v4 \  # surrogate reward (estimated)
       --num_timesteps=5e7 --save_path=logs-phoenix/phoenix/ppo2_50M_noisy_0.2 \
       --weight=0.2 --normal=False --surrogate=True --noise_type=anti_iden

Reproduce the Results

To reproduce all the results reported in the paper, please refer to scripts/ folders in rl-noisy-reward-control and rl-noisy-reward-atari:

  • gym-control/scripts
    • Cartpole
      • train-cem.sh (CEM)
      • train-dqn.sh (DQN)
      • train-duel-dqn.sh (Dueling-DQN)
      • train-qlearn.sh (Q-Learning)
      • train-sarsa.sh (Deep SARSA)
    • Pendulum
      • train-ddpg.sh (DDPG)
      • train-naf.sh (NAF)
  • gym-atari/scripts
    • train-alien.sh (Alien)
    • train-carnival.sh (Carnival)
    • train-mspacman.sh (MsPacman)
    • train-phoenix.sh (Phoenix)
    • train-pong.sh (Pong)
    • train-seaquest.sh (Seaquest)
    • train-normal.sh (Training with true rewards)

If you have eight available GPUs (Memory > 8GB), you can directly run the *.sh scripts one at a time. Otherwise, you can follow the instructions in the scripts and run the experiments. It ususally takes one or two days (GTX-1080 Ti) to train the policy.

cd rl-noisy-reward-atari/baselines
sh scripts/train-alien.sh

The logs and models will be saved automatically. We provide results_single.py for getting the averaged scores:

python -m baselines.results_single --log_dir logs-alien

Citation

Please cite our paper if you use this code in your research work.

Questions/Bugs

Please submit a Github issue or contact [email protected] if you have any questions or find any bugs.