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Code for the paper Optimistic Linear Support and Successor Features as a Basis for Optimal Policy Transfer - ICML 2022

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SFOLS

Code for the paper "Optimistic Linear Support and Successor Features as a Basis for Optimal Policy Transfer" at ICML 2022.

Paper: https://arxiv.org/abs/2206.11326

Install

To install run:

git clone https://github.com/LucasAlegre/sfols
cd sfols
pip install -e .

Run Experiments

Deep Sea Treasure

python experiments/run_dst.py -algo SFOLS

usage: run_dst.py [-h] [-algo {SFOLS,WCPI,Random}]

Four Room

python experiments/run_fourroom.py -algo SFOLS

usage: run_fourroom.py [-h] [-algo {SFOLS,WCPI,SIP,Random}]

Reacher

python experiments/run_reacher.py -SFOLS    

usage: run_reacher.py [-h] [-algo {SFOLS,WCPI,Random}]

Citing

@inproceedings{Alegre+2022,
    author = {Lucas N. Alegre and Ana L. C. Bazzan and Bruno C. da Silva},
    title = {Optimistic Linear Support and Successor Features as a Basis for Optimal Policy Transfer},
    booktitle = {Proceedings of the Thirty-ninth International Conference on Machine Learning},
    address = {Baltimore, MD},
    year = {2022}
}

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Code for the paper Optimistic Linear Support and Successor Features as a Basis for Optimal Policy Transfer - ICML 2022

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