Title: Biased card shuffling and the asymmetric exclusion process
1Biased card shuffling and the asymmetric
exclusion process
Elchanan Mossel, Microsoft Research Joint work
with Itai Benjamini, Microsoft Research Noam
Berger, U.C. Berkeley Chris Hoffman, University
of Washington
2Card Shuffling
- Consider the following Markov chain on the space
of permutations on N elements - Choose uniformly at random two adjacent cards.
- With probability p order them in increasing
order. - With probability q 1-p order them in decreasing
order.
3(No Transcript)
4Terminology
- If p q 0.5, we call the card shuffling
unbiased. - Otherwise, we say that the system is biased. In
this case we assume W.L.O.G that pgtq.
Motivation
- Analytic methods dont give the mixing time
(more later). - Are biased system mixing faster than non-biased?
- Robustness analysis of bubble-sort.
5Mixing times
- The total-variation distance between µ and ?
is - Let ?ts be the distribution on the permutations
after t steps when starting at the permutation s.
- The mixing time of the dynamics is defined by
6 Our Main Result
We prove the following conjecture of Diaconis
and Ram (2000) For all p gt ½, the mixing time
for the biased card shuffling is O(N2).
7Related Card Shuffling Results
- The mixing time for the unbiased card shuffling
is T(N3 log N) (Wilson). Sharp results using
height functions and approximate eigen-functions. - The mixing time for the deterministic biased
card shuffling is O(N2) (Diaconis, Ram) uses
representation theory.
8Methods for bounding Mixing Time
- Coupling
- Spectral gap
- Log Sobolev constant
- Representation theory.
9Spectral gap and mixing time
- The card shuffling defines a stochastic matrix
with spectrum 1 gt ?1 gt gt. - The spectral gap of the dynamics is 1-?1.
- In general
- Problem For the biased card shuffling,
- 1-?1 O(1/n), and
- log(1/(min p(s)) O(n2),
- so we get a bound of order n3.
10Log Sobolev and Mixing Time
The Log Sobolev constant ? (wont define) gives
a bound on the mixing time
Problem. For the biased card shuffling 1/?
O(n3).
11Our proof coupling
- Let x and y be permutations. We choose
simultaneously the location and the direction for
updating x and y. This defines a coupling ?.
12The Exclusion Process
The state space for the exclusion process
is 0,1N where ones represent particles and
zeroes represent their absence.
13Dynamics of the Exclusion process
First we pick a pair of adjacent positions.
If there are zero or two particles we do nothing.
14If there is one particle then
with probability p we put the particle on the
left
with probability 1-p we put the particle on the
right.
15Projections
For any JltN consider the following height
functions hJSN?0,1N The transition
probabilities of biased card shuffling project
to the probabilities of the exclusion
process. (Used by Wilson for the unbiased
case).
1
5
3
2
4
6
16- The coupling ? on the card shuffling generates a
coupling ?J on the exclusion process with J
particles. - The projections determine the permutation. Thus
17A Partial Order
We define a partial order on states of the
exclusion process. For x and y with SyiSxi, we
write y ? x if, for all i, the i-th particle of y
is to the left of the i-th particle of x.
y
x
NOTE The coupling preserves the partial ordering.
18The partial Order and Coupling
For any N and J lt N, let HJ,N be the hitting time
of
Starting at
before time T. Since the coupling preserves the
order
19The partial Order and Coupling
If there exists C such that for all N and jltN
Then
CN2
20Reduction
It is sufficient to prove that there exists a
constant C, such that for all N, the discrete
time exclusion process starting at
will hit
before time CN2 with probability at least 1-1/Ne.
21Equivalent Formulation
There exists a constant C, such that the
continuous time exclusion process starting at
will hit
before time CN with probability at least 1-1/eN.
22To infinite systems
- We can couple with the following process on ?.
- Starting at
How much time will it take until we hit
23The motionless process
- The product measure with probabilities
- Is a stationary measure.
- Its not ergodic. Take the ergodic component
- By Poincaré, the ground configuration is
recurrent. - We prove that its hitting time from the
stationary measure has tail exp(-O(n½)) (Not
easy).
24Kipnis results for product measures
- Kipnis proved that starting with i.i.d.
measure on Z with density ?, the location of a
tagged particle x(t) satisfies the following.
25Half-line results
- We need a similar result starting with all
particles on the left half-line, and a product
measure on the right half-line, the particles
pile up with a linear speed.
By duality, and reflection, suffices to prove
that for the one sided process Kipnis results
still holds.
Note that here the tagged particle moves slower
than in the two sided process.
26Second class particles
- In order to prove the result we couple the one
sided process, two sided process and a third
process with second class particles with the
following drift rule -
27Second class particles
- Consider the following coupling of the 3
systems
1
2
3
Let x1(t) be the location of the tagged
particle in system 1. Similarly, let x2(t), x3(t)
and y3(t). Then for all t, 0 x1(t) - x2(t)
x3(t) - x2(t) max0, x3(t) - y3(t).
28Second class particles
- In order to analyze x3(t) - y3(t), we note that
- The distance between consecutive particles is
geometric.
3
- By deleting all non-occupied sites, we obtain the
motionless process, in which the distance between
the tagged particles has an exponential tail. - Therefore distance has exp. tail as needed
Actual argument goes via coupling of system 3
with a stationary system of two particles which
projects to the stationary motionless measure
29Main steps of main result
We couple the following 3 processes
Is dominated by a process with geometric gaps
Which behaves similarly to a process with
geometric gaps and infinite number of particles
to the right.