A Novel Public Opinion Polarization Model Based on BA Network
Abstract
:1. Introduction
2. Literature Review
2.1. Literature Review Based on J–A Model
2.2. Literature Review of BA Models
2.3. The Prediction Law of Online Public Opinion Dissemination and Polarization
3. A Novel Public Opinion Polarization Model Based on BA Network
3.1. Basic J–A Model
3.2. Improved Ideas
3.3. Methodology
3.3.1. J–A Model
3.3.2. BA Network
3.3.3. Multi-Agent System
3.4. The Novel Public Opinion Polarization Model
3.4.1. Model Construction
- (1)
- Degree (Pi)
- (2)
- Strength of relationship (kij)
- (3)
- Individual attitude value (Xi(t))
- (4)
- The clustering coefficient of individuals (Ci)
- (5)
- The clustering coefficient of the network (C)
- (6)
- Impact threshold (Mi)
- (7)
- Effect interval parameters (d1/d2)
- (8)
- Assimilation/exclusion degree coefficient (β/γ)
- (9)
- Average distance length (L)
3.4.2. Simulation Process
3.4.3. Interaction Rules
- (1)
- Assimilation rules
- (2)
- Exclusionary rule
- (3)
- Neutrality rules
4. Experiment Simulation
- (1)
- The low conformity of individuals leads to the failure to reach the threshold of R > 1 set by the model. Therefore, the attitude value of other individuals has not influenced them, so their attitude value has been maintained as their initial attitude value.
- (2)
- Due to the network structure, the gap between the positive and negative sides is very close, making it difficult for the individual to make a choice under the influence of this evenly matched environment. As a result, a few individuals remain neutral from beginning to end, so they never change their attitude value.
5. An Empirical Case
6. Conclusions
6.1. Summary
- (1)
- Individuals’ attitudes toward public opinion are related to their surroundings. When an individual’s attitude changes toward an event, it is often due to the influence of other perspectives in communicating with other individuals. Through the J–A model, we can understand that the value of an individual’s attitude at a particular moment depends on their attitude and the surrounding environment at the last moment. Based on this principle, we investigated the specific changes in attitude values.
- (2)
- The discrimination of attitudinal values depends on distance. Based on the difference in attitude values, the model specifies interaction rules to determine the attitude preference for the next moment. However, there are different positive effects between two individuals. The degree of influence is also inconsistent between individuals. It is worth discussing in what form the surrounding environment impacts the individual. The J–A model provides an idea. We consider parameters such as individual followership, the strength of network relationships, etc., and assign the corresponding values by specific rules. To obtain the final polarization algorithm, we need to combine the law of related network distribution and choose the BA network as the agent adjacency model.
- (3)
- The group communication behavior between individuals makes the opposing sides continuously reinforce their views and gradually form the polarization of online opinions. The evolutionary results show that there is a clear polarization phenomenon at the beginning of the evolutionary stage. As the polarization process proceeds, the fluctuations level off, and the level of inter-individual following is low. It fails to reach the influence threshold, causing the attitudes of several individuals to stay in the initial state. Moreover, the difference in network structure makes the change of individuals always within a local interval, even when some individuals have difficulty making a choice and remain neutral. With the deepening of polarization, the proportion of network individuals with absolute attitudes increases significantly, and the trend of polarization of double-linked opinions becomes more and more obvious. On the other hand, the proportion of Internet individuals who expressed neutral attitudes remained low and slightly changed. With the development of the event, the Internet users’ ideas about the event become more and more distinct. Based on the results of this simulation, we give policy recommendations and discuss the problems in the experimental process in the following sections.
6.2. Policy Recommendations
- (1)
- Improve the public opinion monitoring mechanism and build a harmonious network order
- (2)
- Rebuild the accountability mechanism for public opinion and crackdown on online anomie
- (3)
- Guide netizens’ values and transmit positive energy of public opinion
- (4)
- Enhance the image of the government and maximize the interests of society
6.3. Limitations and Future Research Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Parameters | Definition |
---|---|
Pi | Degree |
kij | Strength of relationship between individuals |
Xi(t) | Individual attitude value |
Si(t) | Environmental attitude value |
Ci | The clustering coefficient of individuals |
C | The clustering coefficient of the network |
Mi | Impact threshold |
d1 | Assimilation effect interval |
d2 | Exclusion effect interval |
β | Assimilation degree coefficient |
γ | Exclusion degree coefficient |
L | Average distance length |
Interval | Count | Interval | Count | Interval | Count | Interval | Count |
---|---|---|---|---|---|---|---|
(−1.0,−0.9] | 972 | (−0.5,−0.4] | 488 | (0.0,0.1] | 551 | (0.5,0.6] | 549 |
(−0.9,−0.8] | 633 | (−0.4,−0.3] | 538 | (0.1,0.2] | 680 | (0.6,0.7] | 1399 |
(−0.8,−0.7] | 608 | (−0.3,−0.2] | 521 | (0.2,0.3] | 541 | (0.7,0.8] | 768 |
(−0.7,−0.6] | 514 | (−0.2,−0.1] | 507 | (0.3,0.4] | 658 | (0.8,0.9] | 849 |
(−0.6,−0.5] | 519 | (−0.1,0.0] | 1511 | (0.4,0.5] | 690 | (0.9,1.0] | 3083 |
Attitude Value | (−1.0,−0.9] | (−0.1,0.0] | (0.0,0.1] | (0.9,1.0] | |
---|---|---|---|---|---|
Time | |||||
10 | 1570 | 972 | 1113 | 3477 | |
50 | 2926 | 976 | 1152 | 4121 | |
100 | 3058 | 965 | 1154 | 4230 | |
400 | 3071 | 913 | 954 | 4269 |
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Ye, Y.; Zhang, R.; Zhao, Y.; Yu, Y.; Du, W.; Chen, T. A Novel Public Opinion Polarization Model Based on BA Network. Systems 2022, 10, 46. https://doi.org/10.3390/systems10020046
Ye Y, Zhang R, Zhao Y, Yu Y, Du W, Chen T. A Novel Public Opinion Polarization Model Based on BA Network. Systems. 2022; 10(2):46. https://doi.org/10.3390/systems10020046
Chicago/Turabian StyleYe, Yuanjian, Renjie Zhang, Yiqing Zhao, Yuanyuan Yu, Wenxin Du, and Tinggui Chen. 2022. "A Novel Public Opinion Polarization Model Based on BA Network" Systems 10, no. 2: 46. https://doi.org/10.3390/systems10020046
APA StyleYe, Y., Zhang, R., Zhao, Y., Yu, Y., Du, W., & Chen, T. (2022). A Novel Public Opinion Polarization Model Based on BA Network. Systems, 10(2), 46. https://doi.org/10.3390/systems10020046