Open Access Library Journal
Vol.03 No.07(2016), Article ID:69552,11 pages
10.4236/oalib.1102885
Rumor Spreading of a SICS Model on Complex Social Networks with Counter Mechanism
Chen Wan, Tao Li*, Yuanmei Wang, Xiongding Liu
School of Electronics and Information, Yangtze University, Jingzhou, China

Copyright © 2016 by authors and OALib.
This work is licensed under the Creative Commons Attribution International License (CC BY).
http://creativecommons.org/licenses/by/4.0/

Received 7 July 2016; accepted 22 July 2016; published 26 July 2016

ABSTRACT
The rumor spreading has been widely studied by scholars. However, there exist some people who will persuade infected individuals to resist and counterattack the rumor propagation in our social life. In this paper, a new SICS (susceptible-infected-counter-susceptible) rumor spreading model with counter mechanism on complex social networks is presented. Using the mean-field theory the spreading dynamics of the rumor is studied in detail. We obtain the basic reproductive number r and equilibriums. The basic reproductive number is correlated to the network topology and the influence of the counter mechanism. When
, the rumor-free equilibrium is globally asymptotically stable, and when
, the positive equilibrium is permanent. Some interesting patterns of rumor spreading involved with counter force have been revealed. Finally, numerical simulations have been given to demonstrate the effectiveness of the theoretical analysis.
Keywords:
Rumor Spreading Model, Complex Social Networks, Counter Mechanism, Stability, Permanence
Subject Areas: Network Modeling and Simulation

1. Introduction
Nowadays, more and more SNS (Social Networking Services) networks are emerging in our social life, such as Facebook, WeChat, LinkedIn and so on, which are seemingly like cobwebs to connect people from different places. With the rapid increase of the number of SNS users, rumor will be quickly into people’s horizons. Each coin has its two sides, as the rumors spread on the impact of our social lives. Sometimes, the rumor spreading may play a positive role, for instance, we can let more people to concern about something and take pertinent precaution measures by utilizing the rapid and efficient characteristic of rumor spreading [1] [2] . However, most rumors induce public panic, social disarray and severe economic loss, etc. [3] [4] . Therefore, it is very important to investigate the mechanism of rumor spreading and how to effectively control the rumor.
Rumor can be viewed as an “infection of the mind”, and its spreading shows an interesting similarity to the epidemic spreading [5] - [9] . Daley and Kendal [5] first proposed the classic DK model of rumor spreading. Since then, most of the studies are based on DK model [10] - [17] . In order to overcome the weaknesses of DK model, more and more researchers consider the topological characteristics of underlying networks that they have started to study the problems of rumor spreading on complex networks [15] - [20] . Nekovee and Moreno et al. [16] derived a conclusion that scale-free social networks were prone to the spreading of rumors. In Ref. [17] , the authors found that the degree distribution influenced directly the final rumor size. Recently, researchers [18] - [20] started to take full into account of the role of human behaviors and different mechanisms in the rumor spreading. Zhao et al. [18] presented a novel model by introducing the forget mechanism. Wang et al. [19] presented a novel SIR model by introducing the trust mechanism between the ignorant nodes and the spreader nodes. Han et al. [20] presented a novel model based on the heat energy theory to analyze the mechanisms of rumor propagation on social networks.
However, most of the previous models didn’t consider that people may not agree with the rumor and counterattack it strongly. Based on some realistic perspectives, different people may have different views to the rumor on social networks. Some people may be in conflict with their beliefs when they hear rumor. They will persuade infected individuals to resist and counterattack the rumor propagation. In order to study this phenomenon, we present a SICS (susceptible-infected-counter-susceptible) rumor spreading model with counter mechanism on complex social networks to explain it. Obviously, the counter mechanism can change the contacts among people, i.e. network topology structure. Within the counter mechanism of the SICS model, when an infected individual contacts a counter individual, it may become a counter individual with a certain probability.
The rest of this paper is organized as follows. In Section 2, we present a SICS rumor spreading model and derive the corresponding mean-field equations to describe the dynamics of the model. In Section 3, the basic reproductive number obtained at first. Then we analyze the globally asymptotic stability of rumor-free equilibrium and the permanence of the rumor in detail. Simulation results of the proposed model are shown in Section 4. Finally, we conclude the paper in Section 5.
2. Model Formulation
As mentioned earlier, we present a SICS rumor spreading model. The population is divided into three classes: susceptible individuals who have ambiguous attitude about the rumor; infected individuals who believe and spread it actively; counter individuals who reject the rumor, refute the rumor and persuade neighbors don’t believe in it. Taking into account the heterogeneity induced by the presence of vertices with different connectivities, let
be the densities of susceptible, infected and counter individuals of connectivity k at time t, respectively.
The SICS model has the flow diagram given in Figure 1. In the course of rumor spreading, a susceptible individual is infected with probability
if it is connected to an infected individual. When a counter individual
Figure 1. The flow diagram of the SICS model.
contacts an infected individual, the counter individual can persuade infected individual to resist and counterattack the rumor, so the infected individual becomes a counter node with probability
. A susceptible individual transform into a counter individual with probability
. Due to some own reason, an infected individual turns into a counter individual with probability
. However, some counter individuals, due to loss of counterattack ability, join the susceptible individuals again, i.e., moving back to susceptible state, with probability
. We assume that the immigration rate and emigration rate are both constant l in the spreading process of rumor. All recruitment is into the susceptible class.
Thus, the dynamic mean-field reaction rate equations can be written as
(1)
The probability
describes a link pointing to an infected individual,
(2)
the probability
describes a link pointing to a counter individual which satisfies the relation
(3)
where
is the average degree within the network. And 


3. Stability Analysis
In this section, we present an analytic solution to the deterministic equations describing the dynamic of the (SICS) rumor spreading process.
Theorem 1. Let.



Proof. To get the equilibrium solution


where


According to the following normalization condition for all k:

We can obtain:


Inserting Equation (6) into Equation (2), we obtain the following equation

Inserting Equation (7) into Equation (3), we obtain the following equation

Equation (9) divided by Equation (8), we obtain the following equation

Inserting Equation (10) into Equation (8), we can obtain

Obviously, 



We can obtain the basic reproductive number

So, a nontrivial solution exists if and only if
Substitute the nontrivial solution of (11) into (6), we can get

Therefore, the positive equilibrium 


Remark. The basic reproductive number is obtained by Equation (12), which depends on the fluctuations of the degree distribution and the influence of counter mechanism. The 
Theorem 2. If

Proof. We rewrite the system (1) as

The Jacobian matrix of system (13) at 


where


By mathematical induction method, the characteristic equation can be calculated as follows
where

The stability of 

Note that

So, we have obtained

When


Now we will prove that 
Now we consider the comparison equation with the condition 

integrating from 0 to t yields

Since


According to the comparison theorem of functional differential equation, we can get

Thus, 





Theorem 3. If


Proof. We will use the result of Thieme in Theorem 4.6 [21] to prove it. Define



In the following, we will show that (1) is uniformly persistent with respect to
Obviously, X is positively invariant with respect to system (1). If














Denote
where 



It is easy to verify that system (13) has a unique equilibrium 












where 








Since


For


For all 


The derivative of V along the solution is given by
Hence 


4. Numerical Simulations
In this section, several numerical simulations are presented to illustrate our analysis. We consider the system (1) on a complex social network with


In Figure 2, the parameters are chosen as 



In Figure 3, we choose 


Figure 2. The time series of system (1) with 

Figure 3. The time series of system (1) with 

In Figure 4, numerical simulations show the spread of SICS model on complex social networks with 




In Figure 5, numerical simulations show the spread of SICS model on complex social networks with 




Figure 4. The prevalence 


Figure 5. The prevalence 


5. Conclusion
In summary, we present a new SICS rumor spreading model with counter mechanism on complex social networks. By using the mean-field theory, we obtain the basic reproductive number and equilibriums. Theoretical results indicate that the basic reproductive number is significantly dependent on the topology of the underlying networks and the counter mechanism. The basic reproductive number is in direct proportion to


Acknowledgements
This work was supported in part by the National Natural Science Foundation of China under Grant 60973012.
Cite this paper
Chen Wan,Tao Li,Yuanmei Wang,Xiongding Liu, (2016) Rumor Spreading of a SICS Model on Complex Social Networks with Counter Mechanism. Open Access Library Journal,03,1-11. doi: 10.4236/oalib.1102885
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NOTES
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