Reinforcement Learning


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Documentation for package ‘reinforcelearn’ version 0.2.1

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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