A OpenAI Gym Env for continuous actions
Project description
gym_contin
The domanin features a continuos state and a dicrete action space.
The environment initializes:
- cross-sectional dataset with variables X_a, X_s, Y and N observations;
- logit model fitted on the dataset, retrieving parameters \theta_0, \theta_1, \theta_2;
The agent:
- sees a patient (sample observation);
- predict his risk of admission \rho, using initialized parameters
- if \rho < 1/2:
- do not intervene on X_a, which stays the same
- else:
- sample an action a in [0,1]
- compute g(a, X_a) = newX_a
- intervene on X_a by updating it to newX_a
- give reward equal to average risk of admission, using predicted Y, initial parameters and sampled values
(shouldn't I fit a new logit-link? parameters are now diff?)
To install
git clone https://github.com/claudia-viaro/gym-contin.git cd gym-contin
pip install gym-contin import gym_contin env =gym.make('contin-v0')
To change version
- change version to, e.g., 1.0.7 from setup.py file
- git clone url-here
- cd gym-contin
- python setup.py sdist bdist_wheel
- twine check dist/*
- twine upload --repository-url https://upload.pypi.org/legacy/ dist/*
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