I am working on an Agent class in Python 2.7.11 that uses a Markov Decision Process (MDP) to search for an optimal policy π in a GridWorld. I am implementing a basic value iteration for 100 iterations of all GridWorld states using the following Bellman Equation:

enter image description here

  • T(s,a,s') is the probability function of successfully transitioning to successor state s' from current state s by taking action a.
  • R(s,a,s') is the reward for transitioning from s to s'.
  • γ (gamma) is the discount factor where 0 ≤ γ ≤ 1.
  • Vk(s') is a recursive call to repeat the calculation once s' has been reached.
  • Vk+1(s) is representative of how after enough k iterations have occured, the Vk iteration value will converge and become equivalent to Vk+1

This equation is derived from taking the maximum of a Q value function, which is what I am using within my program:

enter image description here

When constructing my Agent, it is passed an MDP, which is an abstract class containing the following methods:

# Returns all states in the GridWorld
def getStates()

# Returns all legal actions the agent can take given the current state
def getPossibleActions(state)

# Returns all possible successor states to transition to from the current state 
# given an action, and the probability of reaching each with that action
def getTransitionStatesAndProbs(state, action)

# Returns the reward of going from the current state to the successor state
def getReward(state, action, nextState)

My Agent is also passed a discount factor, and a number of iterations. I am also making use of a dictionary to keep track of my values. Here is my code:

class IterationAgent:

    def __init__(self, mdp, discount = 0.9, iterations = 100):
        self.mdp = mdp
        self.discount = discount
        self.iterations = iterations
        self.values = util.Counter() # A Counter is a dictionary with default 0

        for transition in range(0, self.iterations, 1):
            states = self.mdp.getStates()
            valuesCopy = self.values.copy()
            for state in states:
                legalMoves = self.mdp.getPossibleActions(state)
                convergedValue = 0
                for move in legalMoves:
                    value = self.computeQValueFromValues(state, move)
                    if convergedValue <= value or convergedValue == 0:
                        convergedValue = value

                valuesCopy.update({state: convergedValue})

            self.values = valuesCopy

    def computeQValueFromValues(self, state, action):
        successors = self.mdp.getTransitionStatesAndProbs(state, action)
        reward = self.mdp.getReward(state, action, successors)
        qValue = 0
        for successor, probability in successors:
            # The Q value equation: Q*(a,s) = T(s,a,s')[R(s,a,s') + gamma(V*(s'))]
            qValue += probability * (reward + (self.discount * self.values[successor]))
        return qValue

This implementation is correct, though I am unsure why I need valuesCopy to accomplish a successful update to my self.values dictionary. I have tried the following to omit the copying, but it does not work since it returns slightly incorrect values:

for i in range(0, self.iterations, 1):
    states = self.mdp.getStates()
    for state in states:
        legalMoves = self.mdp.getPossibleActions(state)
        convergedValue = 0
        for move in legalMoves:
            value = self.computeQValueFromValues(state, move)
            if convergedValue <= value or convergedValue == 0:
                convergedValue = value

        self.values.update({state: convergedValue})

My question is why is including a copy of my self.values dictionary necessary to update my values correctly when valuesCopy = self.values.copy() makes a copy of the dictionary anyways every iteration? Shouldn't updating the values in the original result in the same update?

  • This has almost as much math as it does code. I approve. – Akshat Mahajan Apr 2 '16 at 6:22
  • Yes, Artificial Intelligence is incredibly mathematics heavy, especially in the Calculuses. – Jodo1992 Apr 2 '16 at 6:49
  • What is util.Counter()? – styvane Apr 2 '16 at 7:38
  • Counter is a class that extends dictionary and defaults all key values to 0. There doesn't appear to be any update() method in its definition – Jodo1992 Apr 2 '16 at 7:41

There's an algorithmic difference in having or not having the copy:

# You update your copy here, so the original will be used unchanged, which is not the 
# case if you don't have the copy
valuesCopy.update({state: convergedValue})

# If you have the copy, you'll be using the old value stored in self.value here, 
# not the updated one
qValue += probability * (reward + (self.discount * self.values[successor]))
  • Is there any way around this? I know I don't necessarily need to, but I find copying out-of-place to be wasteful in space and processing – Jodo1992 Apr 2 '16 at 7:46
  • Maybe I miss something, but it looks like you replace all your states in the copy by new ones. So why make a copy in the first place. Wouldn't creating an empty dict for each iteration instead of the copy work just as well? – Jacques de Hooge Apr 2 '16 at 8:55
  • Yes, exactly. But it does not. – Jodo1992 Apr 2 '16 at 13:28
  • To be clear I do not say you should only use the original dictionary. I suggest you create a new one for the new values, leaving the previous one to compute from. From your answer I gather that you tried that and that it doesn't work. I have to admit I don't know why. Sorry. – Jacques de Hooge Apr 3 '16 at 9:09

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.