Created
August 4, 2020 04:59
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import numpy as np | |
from matplotlib import pyplot as plt | |
def make_Av(N): | |
a = 1 - 0.5 * 0.75 | |
b = 0.5 * 0.25 | |
A = np.zeros((2 * N + 2, 2 * N + 2)) | |
# Start | |
A[0, 1] = 1 | |
for i in range(1, 2*N, 2): | |
# forward | |
A[i, i - 1] = 1 - a | |
A[i, i + 2] = a | |
# reverse | |
A[i + 1, i - 1] = 1 - b | |
A[i + 1, i + 2] = b | |
# absorbing state | |
A[2*N + 1, 2*N + 1] = 1 | |
# initial state | |
v = np.zeros(2*N + 2) | |
v[0] = 1 | |
return A, v | |
def compute_E(N): | |
A, v = make_Av(N) | |
I = np.eye(A.shape[0]) | |
F = (I - A)[:-1, :-1] | |
N = np.linalg.inv(F) | |
E = np.sum(N[0, :]) | |
return E | |
vals = [ | |
compute_E(N + 1) / compute_E(N) | |
for N in range(1, 100)] | |
print(vals) | |
plt.plot(vals) | |
plt.show() |
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