Implementation of CSRL from the AAAI2022 paper: Constraint Sampling Reinforcement Learning: Incorporating Expertise For Faster Learning

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Deep LearningCSRL
Overview

CSRL

Implementation of CSRL from the AAAI2022 paper: Constraint Sampling Reinforcement Learning: Incorporating Expertise For Faster Learning

Python: 3.6.13
Includes implementations in both tensorflow and pytorch.
See requirements.txt for required packages.

Description:
See run_experiment.ipynb to run the experiments in each domain.
The environemnts used as well as a notebook detailing how to use them are in the "environments_and_constraints" directory.
The agent implementations used are in the "agents" directory.
The "fit_environments" directory contains code for fitting the parameters of the various environments.

Todos:

  • Add UCRL agent and Movielens experiment code

Credits:
The rainbow implementation is based off of the rainbow tutorial: https://github.com/Curt-Park/rainbow-is-all-you-need and the segment tree class (segment_tree.py) is also their implementation. The HIV environment is from https://bitbucket.org/rlpy/rlpy/src/master/rlpy/Domains/HIVTreatment.py

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