Created
April 30, 2019 21:07
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def induced_chain(transition, policy): | |
"""Marginalize the choice of actions under the given policy | |
Args: | |
transition (numpy.ndarray): Transition kernel as a (A x S x S) tensor | |
policy (numpy.ndarray): Policy as a (S x A) matrix | |
Returns: | |
numpy.ndarray: Marginalized transition matrix as a (S x S) matrix, | |
where the first dimension denote "source" states and the second is for | |
"destination" states. From i to j. | |
""" | |
return np.einsum('kij,ik->ij', transition, policy) | |
def discounted_stationary_distribution(transition, policy, initial_distribution, discount): | |
"""Solve the discounted stationary distribution equations | |
Args: | |
transition (numpy.ndarray): Transition kernel as a (A x S x S) tensor | |
policy (numpy.ndarray): Policy as a (S x A) matrix | |
initial_distribution (numpy.ndarray): Initial distribution as a (S,) vector | |
discount (float): Discount factor | |
Returns: | |
numpy.ndarray: The discounted stationary distribution as a (S,) vector | |
""" | |
transition_policy = induced_chain(transition, policy) | |
A = np.eye(transition_policy.shape[0]) - discount*transition_policy | |
b = (1 - discount)*initial_distribution | |
return np.linalg.solve(A.T, b) |
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