Top to random eigenvalues.py
From Werner KRAUTH
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| ==Further information== | ==Further information== | ||
| - | The | + | The program [[Top_to_random_simul.py | Top_to_random_simul.py]] contains a Monte Carlo simulation of the top-to-random shuffle. It will output a shuffled deck with will be perfectly shuffled in the limit of infinite shuffling times. [[Top_to_random_simul_stop.py |Top_to_random_simul_stop.py]] performs a simulation with a stopping criterion: It will output a perfectly shuffled deck. |
| ==References== | ==References== | ||
Revision as of 20:29, 7 June 2024
Contents |
Context
This page is part of my 2024 Beg Rohu Lectures on "The second Markov chain revolution" at the Summer School "Concepts and Methods of Statistical Physics" (3 - 15 June 2024).
In this example, I consider the transition matrix for the top-to-random shuffle discussed in Lecture 2. This N! x N! matrix has N distinct eigenvalues, and therefore huge degeneracies.
Python program
import numpy as np
import itertools
import scipy.linalg as la
def factorial(n):
return 1 if n == 0 else (0 if n == 0 else factorial(n - 1) * n)
for N in [2, 3, 4, 5, 6, 7]:
FacN = factorial(N)
ConfCopy = [0] * N
print(N, 'N', FacN)
#
# Setup of transition matrix
#
P = np.zeros((FacN, FacN))
Conf = [k for k in range(N)]
ConfList = list(itertools.permutations(Conf))
for Conf in ConfList:
i = ConfList.index(tuple(Conf))
ConfCopy[:] = Conf
a = ConfCopy.pop(0)
for k in range(N):
TargetConf = ConfCopy[0:k] + [a] + ConfCopy[k:N - 1]
j = ConfList.index(tuple(TargetConf))
P[i][j] = 1.0 / float(N)
eigvals, eigvecsl, eigvecsr = la.eig(P, left=True)
eigvals.sort()
stats = [0] * (N+1)
for a in eigvals:
index = int(N * a.real + 0.5)
stats[index] += 1
print(stats)
Output
2 N 2 [1, 0, 1]
3 N 6 [2, 3, 0, 1]
4 N 24 [9, 8, 6, 0, 1]
5 N 120 [44, 45, 20, 10, 0, 1]
6 N 720 [265, 264, 135, 40, 15, 0, 1]
For N=6, the output means that
the eigenvalue 1 is 1 times degenerate
the eigenvalue 1 - 1/N is 0 times degenerate
the eigenvalue 1 - 2/N is 15 times degenerate
the eigenvalue 1 - 3/N is 40 times degenerate, etc
The degeneracy of the second eigenvalue is thus n(n-1)/2.
Further information
The program Top_to_random_simul.py contains a Monte Carlo simulation of the top-to-random shuffle. It will output a shuffled deck with will be perfectly shuffled in the limit of infinite shuffling times. Top_to_random_simul_stop.py performs a simulation with a stopping criterion: It will output a perfectly shuffled deck.
