- An implementation of ["Differentiable Trust Region Layers for Deep Reinforcement Learning" by Fabian Otto et al. (TRPL)](https://arxiv.org/abs/2101.09207)
Follow instructions for the [Metastable Projections](https://git.dominik-roth.eu/dodox/metastable-projections) ([GitHub Mirror](https://github.com/D-o-d-o-x/metastable-projections)).
KL Projections require ALR's ITPAL as an additional dependecy.
SB3 does not support full covariances (only diagonal). We still provide support for full covariances via the seperate PCA package. (But since we don't actually want to use PCA ('Prior Conditioned Annealing'), we pass 'skip_conditioning=True'; this will lead to the underlying Noise being used directly.)
We therefore pass `use_pca=True` and `policy_kwargs.dist_kwargs = {'Base_Noise': 'WHITE', par_strength: 'FULL', skip_conditioning=True}`
```python
# We support PPO and TRPL, (SAC is untested, we are open to PRs fixing issues)
model = TRPL("MlpPolicy", env_id, n_steps=128, seed=0, policy_kwargs=dict(net_arch=[16], ), projection_class=projection, verbose=1)
model.learn(total_timesteps=100)
```
The supportted values for `par_strength` are:
SCALAR: We only learn a single scalar value, that is used along the whole diagonal. No covariance is modeled.
DIAG: We learn a diagonal covariance matrix. (e.g. only variances).
FULL: We learn a full covariance matrix, induced via cholesky decomp.
CONT_SCALAR: Same as SCALAR, but the scalar is not global, it is parameterized by the policy net.
CONT_DIAG: Same as DIAG, but the values are not global, they are parameterized by the policy net.
CONT_HYBRID: We learn a parameric diagonal, that is scaled by the policy net.
CONT_FULL: Same as FULL, but parameterized by the policy net.
Since this Repo is an extension to [Stable Baselines 3 by DLR-RM](https://github.com/DLR-RM/stable-baselines3), it contains some of it's code. SB3 is licensed under the [MIT-License](https://github.com/DLR-RM/stable-baselines3/blob/master/LICENSE).