| reinforcelearn-package | Reinforcement Learning. |
| cliff.walking | Cliff Walking |
| CliffWalking | Cliff Walking |
| Eligibility | Eligibility traces |
| eligibility | Eligibility traces |
| Environment | Custom Reinforcement Learning Environment |
| EpsilonGreedyPolicy | Epsilon Greedy Policy |
| experience.replay, | Experience Replay |
| getEligibilityTraces | Get eligibility traces |
| getReplayMemory | Get replay memory. |
| getStateValues | Get state values. |
| getValueFunction | Get weights of value function. |
| GreedyPolicy | Epsilon Greedy Policy |
| Gridworld | Gridworld |
| GymEnvironment | Gym Environment |
| iht | Tile Coding |
| interact | Interaction between agent and environment. |
| makeAgent | Create Agent. |
| makeAlgorithm | Make reinforcement learning algorithm. |
| makeEnvironment | Create reinforcement learning environment. |
| makePolicy | Create policy. |
| makeReplayMemory | Experience Replay |
| makeValueFunction | Value Function Representation |
| MdpEnvironment | MDP Environment |
| mountain.car | Mountain Car |
| MountainCar | Mountain Car |
| MountainCarContinuous | Mountain Car |
| MountainCarContinuous, | Mountain Car |
| neural.network | Value Network |
| nHot | Make n hot vector. |
| Policy | Create policy. |
| QLearning | Q-Learning |
| qlearning | Q-Learning |
| RandomPolicy | Random Policy |
| reinforcelearn | Reinforcement Learning. |
| reinforcementlearning | Reinforcement Learning. |
| replay.memory | Experience Replay |
| SoftmaxPolicy | Softmax Policy |
| table | Value Table |
| tiles | Tile Coding |
| ValueNetwork | Value Network |
| ValueTable | Value Table |
| windy.gridworld | Windy Gridworld |
| WindyGridworld | Windy Gridworld |