The voter model is a process similar to contact process. By voter model, we mean a process on lattice, graph or network in which 's and 's flip (individually) at rates that depend on the states of the neighboring sites. Note that only one flip happens each time. Problems involving the voter model will often be recast in terms of the dual system of coalescing Markov chains. Frequently, these problems will then be reduced to others involving independent Markov chains.

voter model on the graph with two clusters

One can imagine that there is a "voter" at each point, and that his opinions on some issue changes at random times under the influence of opinions of his neighbours. More specifically, for any individuals at site who at any time can have one or two opinions (denoted by 0 and 1). At exponential times of rate 1, the individual at chooses one of its neighbor site with probability and adopts 's opinion. Only one "voter" changes his mind each time. An alternative interpretation is in terms of spatial conflict. Suppose two nations control the areas and respectively. A flip from 0 to 1 at , for instance, indicates an invasion of by the other nation.

Here we will only talk about continuous time voter models described on lattice .

Definition

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A voter model is a (continuous time) Markov process   with state space   and transition rates function  , where   is a d-dimensional integer lattice, and  •,•  is assumed to be nonnegative, uniformly bounded and continuous as a function of   in the product topology on  . Each component   is called a configuration. To make it clear that   stands for the value of a site x in configuration  ; while   means the value of a site x in configuration   at time  .

The dynamic of the process are specified by the collection of transition rates. For voter models, the rate at which there is a flip at   from 0 to 1 or vice versa is given by a function   of site  . It has the following properties:

  1.   for every   if   or if  
  2.   for every   if   for all  
  3.   if   and  
  4.   is invariant under shifts in  

Property (1) says that   and   are fixed points for the evolution. (2) indicates that the evolution is unchanged by interchanging the roles of 0's and 1's. In property (3),   means  , and   implies   if  , and implies   if  .

Clustering and Coexist

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What we are interesting in is the limiting behavior of the models. Since the flip rates of a site depends its neighbours, it is obvious that when all sites take the same value, the whole system stops changing forever. Therefore, a voter model has two trivial extremal stationary distributions, the point-masses   and   on   and   respectively, which represent consensus. The main question we will discuss is whether or not there are others, which would then represent coexistence of different opinions in equilibrium. We say that coexists occurs if there is a stationary distribution that concentrates on configurations with infinitely many 0's and 1's. On the other hand, if for all   and all initial configurations, we have:

 

we will say that the process clusters.

The Linear Voter Model

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Model description

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This section will be dedicated to one of the basic voter models, the Linear Voter Model.

Let  •,•  be the transition probabilities for an irreducible random walk on  ,and we have:

 

Then in Linear voter model, the transition rates are linear functions of  :

 

Or if we use   to indicate that a flip happens at site  , the transition rates are simply:

 

We define a process of coalescing random walks   as follows. Here   denotes the set of sites occupied by these random walks at time  . To define  , consider several (continuous time) random walks on   with unit exponential holding times and transition probabilities  •,•  , and take them to be independent until two of them meet. At that time, the two that meet coalesce into one particle, which continues to move like a random walk with transition probabilities  •,•  .

The concept of Duality is essential for analysing the behavior of the voter models. The linear voter models satisfy a very useful form of duality, known as Coalescing Duality,which is:

 

where   is the initial configuration of   and   is the initial state of the coalescing random walks  .

Limiting behaviors of Linear Voter Models

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Let   be the transition probabilities for an irreducible random walk on   and  , then the duality relation for such linear voter models says that  

 

where   and   are (continuous time) random walks on   with  ,  , and   is the position taken by the random walk at time  .   and   forms a coalescing random walks described at the end of section 2.1.   is a symmetrized random walk. If   is recurrent and  ,   and   will hit eventually with probability 1, and hence

 

Therefore the process clusters.

On the other hand, when  , the system coexists. It is because for  ,   is transient, thus there is a positive probability that the random walks never hit, and hence if the initial distribution for   is the product measure   with density  , then for  

 

In fact, all extremal stationary distributions are obtained by taking limits of the distribution at time t of the process whose initial distribution is   for  ,  .

Now let   be a symmetrized random walk, we have the following theorems:

Theorem 2.1

The linear voter model   clusters if   is recurrent, and coexists if   is transient. In particular,

  1. the process clusters if   and  , or if   and  ;
  2. the process coexists if  .

Remarks: To contrast this with the behavior of the threshold voter models that will be discussed in next section, note that whether the linear voter model clusters or coexists depends almost exclusively on the dimension of the set of sites, rather than on the size of the range of interaction.

Theorem 2.2 Suppose   is any translation spatially ergodic and invariant probability measure on the state space  , then

  1. If   is recurrent, then  ;
  2. If   is transient, then  .

where   is the distribution of  ;   means weak convergence,   is a nontrivial extremal invariant measure and  .

A special linear voter model

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One of the interesting special cases of the linear voter model, known as the basic linear voter model, is that for state space  :

 

So that

 

In this case,the process clusters if  , while coexists if  . This dichotomy is closely related to the fact that simple random walk on   is recurrent if and only if   and transient if  .

Clustering in one dimension  

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For the special case with  ,   and   for each  . We know from Theorem 2.2 that  , thus clustering occurs in this case. The aim of this section is to give a more precise description of this clustering.

Clusters of an   are defined to be the connected components of   or  . The mean cluster size for   is defined to be:

 

provided the limit exists.

Proposition 2.3

Suppose the voter model is with initial distribution   and   is a translation invariant probability measure, then

 

Occupation time

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Define the occupation time functionals of the basic linear voter model as:

 

Theorem 2.4

Assume that for all site x and time t,  , then as  ,   almost surely if  

proof

By Chebyshev's inequality and the Borel–Cantelli lemma, we can get the equation below:

 

The theorem follows when letting  .

The Threshold Voter Model

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Model description

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In this section, we will concentrate on a kind of non-linear voter models, known as \textsl{the threshold voter model}.

To define it, let   be a neighbourhood of   that is obtained by intersecting   with any compact, convex, symmetric set in  ; in other word,   is assumed to be a finite set that is symmetric with respect to all reflections and irreducible (i.e. the group it generates is  )We will always assume that   contains all the unit vectors  . For a positive integer  , the threshold voter model with neighbourhood   and threshold   is the one with rate function:

 

Simply put, the transition rate of site   is 1 if the number of sites that do not take the same value is larger or equal to the threshold T. Otherwise, site   stays at the current status and will not flip.

For example, if  ,   and  , then the configuration   is an absorbing state or a trap for the process.

Limiting behaviors of Threshold Voter Model

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If a threshold voter model does not fixate, we should expect that the process will coexist for small threshold and cluster for large threshold, where large and small are interpreted as being relative to the size of the neighbourhood,  . The intuition is that having a small threshold makes it easy for flips to occur, so it is likely that there will be a lot of both 0's and 1's around at all times. Following are three major results:

  1. If  , then the process fixates in the sense that each site flips only finitely often.
  2. If   and  , then the process clusters.
  3. If   with   sufficiently small( ) and   sufficiently large, then the process coexists.

Here are two theorems corresponding to properties (1) and (2).

Theorem 3.1

If  , then the process fixates.

Theorem 3.2

The threshold voter model in one dimension ( ) with  , clusters.

proof

The idea of the proof is to construct two sequences of random times  ,   for   with the following properties:

  1.  ,
  2.   are i.i.d.with  ,
  3.   are i.i.d.with  ,
  4. the random variables in (b) and (c) are independent of each other,
  5.   is constant on   for every  .

Once this construction is made, it will follow from renewal theory that

 

Hence, , so that the process clusters.

Remarks: (a) Threshold models in higher dimensions do not necessarily cluster if  . For example, take   and  . If   is constant on alternating vertical infinite strips,that is for all  :

 

then no transition ever occur, and the process fixates.

(b) Under the assumption of Theorem 3.2, the process does not fixate. To see this, consider the initial configuration  , in which infinitely many zeros are followed by infinitely many ones. Then only the zero and one at the boundary can flip, so that the configuration will always look the same except that the boundary will move like a simple symmetric random walk. The fact that this random walk is recurrent implies that every site flips infinitely often.


Property 3 indicates that the threshold voter model is quite different from the linear voter model, in that coexistence occurs even in one dimension, provided that the neighbourhood is not too small. The threshold model has a drift toward the "local minority", which is not present in the linear case.

Most proofs of coexistence for threshold voter models are based on comparisons with hybrid model known as the threshold contact process with parameter  . This is the process on   with flip rates:

 

Proposition 3.3

For any   and  , if the threshold contact process with   has a nontrivial invariant measure, then the threshold voter model coexists.

Model with Threshold T=1

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The case that   is of particular interest because it is the only case in which we currently know exactly which models coexist and which models cluster.

In particular, we are interested in a kind of Threshold T=1 model with   that is given by:

 

  can be interpreted as the radius of the neighbourhood  ;   determines the size of the neighbourhood (i.e., if  , then  ; while for  , the corresponding  ).

By Theorem 3.2, the model with   and   clusters. The following theorem indicates that for all other choices of   and  , the model coexists.

Theorem 3.4

Suppose that  , but  . Then the threshold model on   with parameter   coexists.

The proof of this theorem is given in a paper named "Coexistence in threshold voter models" by Thomas M. Liggett.

References

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  • Liggett, Thomas M. (1997). "Stochastic Models of Interacting Systems". The Annals of Probability. 25 (1). Institute of Mathematical Statistics: 1–29. doi:10.1073/pnas.1011270107. ISSN 0091-1798. PMC 2944758. PMID 20826441.
  • Liggett, Thomas M. (1994). "Coexistence in Threshold Voter Models". The Annals of Probability. 22 (2): 764–802. doi:10.1214/aop/1176988729.
  • Cox, J. Theodore; Griffeath, David (1983). "Occupation Time Limit Theorems for the Voter Model". The Annals of Probability. 11 (4): 876–893. doi:10.1214/aop/1176993438.{{cite journal}}: CS1 maint: date and year (link)
  • Durrett, Richard (1991). Random walks, Brownian motion, and interacting particle systems. ISBN 0817635092. {{cite book}}: Unknown parameter |coauthors= ignored (|author= suggested) (help)
  • Liggett, Thomas M. (1985). Interacting Particle Systems. New York: Springer Verlag. ISBN 0-387-96069-4.
  • Thomas M. Liggett, "Stochastic Interacting Systems: Contact, Voter and Exclusion Processes", Springer-Verlag, 1999.

Category:Stochastic processes Category:Lattice models