- A replay buffer is required for off-policy RL algorithms. We sample from the replay buffer a mini-batch of experiences and use it to train the Q(s,a) state-value function in DQN and the actor's policy in a DDPG.
- We discount rewards, as there is more uncertainty about the long-term performance of the agent. So, immediate rewards have a higher weight, a reward earned in the next time step has a relatively lower weight, a reward earned in the subsequent time step has an even lower weight, and so on.
- The training of the agent will not be stable if γ > 1. The agent will fail to learn an optimal policy.
- A model-based RL agent has the potential to perform well, but there is no guarantee that it will perform better than a model-free RL agent, as the model of the environment we are constructing need not always be a good one. It is also very hard to build an accurate...
United States
Great Britain
India
Germany
France
Canada
Russia
Spain
Brazil
Australia
Singapore
Hungary
Philippines
Mexico
Thailand
Ukraine
Luxembourg
Estonia
Lithuania
Norway
Chile
South Korea
Ecuador
Colombia
Taiwan
Switzerland
Indonesia
Cyprus
Denmark
Finland
Poland
Malta
Czechia
New Zealand
Austria
Turkey
Sweden
Italy
Egypt
Belgium
Portugal
Slovenia
Ireland
Romania
Greece
Argentina
Malaysia
South Africa
Netherlands
Bulgaria
Latvia
Japan
Slovakia