Summary
In this chapter, you learned how policy gradient algorithms can be adapted to control agents with continuous actions and then used a new set of environments called Roboschool.
You also learned aboutand developed two advanced policy gradient algorithms: trust region policy optimization and proximal policy optimization. These algorithms make better use of the data sampled from the environment and both use techniques to limit the difference in the distribution of two subsequent policies. In particular, TRPO (as the name suggests) builds a trust region around the objective function using a second-order derivative and some constraints based on the KL divergence between the old and the new policy. PPO, on the other hand, optimizes an objective ...
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