A Multi-Information Dissemination Model Based on Cellular Automata
Abstract
:1. Introduction
2. Related Works
2.1. Propagation Dynamics
- (1)
- (2)
- (3)
- The Susceptible–Infectious–Recovered (SIR) model [23,24] is a generic epidemiological model that describes the transmission of infectious diseases through individuals who transit between susceptible, infectious, and recovered states. Han et al. analyzed the impact of human activity patterns on information diffusion using the SIR model [25].
- (4)
- The Susceptible–Knowledgeable–Infectious–Recovered (SKIR) model extends the traditional SIR model by introducing a “knowledgeable” state, where individuals have been exposed to both the disease or information and counteracting knowledge. Xiao et al. proposed an SKIR rumor propagation model to describe the propagation of rumors and the dynamic changes in the influence of anti-rumor information [26].
- (5)
- The Susceptible–Exposed–Infectious–Recovered (SEIR) model [26,27] introduces an “exposed” state between being susceptible and infectious, representing individuals who have been exposed to the disease or information but are not yet infectious. This model is particularly relevant for diseases with an incubation period. Li et al. proposed a public opinion evolution HK–SEIR model which combines the opinion fusion HK and the epidemic transmission SEIR models [28].
2.2. Cellular Automata
3. Detailed Model
3.1. Model Characteristic
3.1.1. Model Definition
- (1)
- S→E Transition:where represents the number of user nodes in the neighborhood space of a user node expressing a certain opinion, represents the total number of user nodes in the neighborhood space of a user node, represents the total number of user nodes in the entire space expressing a certain opinion, represents the total number of user nodes in the entire space and represents the total number of user nodes in the neighborhood expressing a certain opinion; represents the transition factor.
- (2)
- S,E→I Transition: When users engage in discussions on public opinion topics, they may exhibit a proactive or reactive behavior when expressing their viewpoints. These behaviors must be processed with different conditions. Active Propagation: If a cellular node is actively participating, there exists a probability that it will contribute relevant commentary in the subsequent time step. This probability is determined by the “Independent Opinion Index” of the node.Passive Propagation: If a cellular node is in the participating state, neighboring nodes exhibit a propagation influence greater than that of the node at the previous time step; then, it may passively transition to a propagation state (I) with a certain probability.Continuation of Participation: If the node remains in a participating state without entering either the active or passive propagation states, it will persist in this state until it meets the conditions for exiting.
- (3)
- E,I→R Transition: When both the permanent exit time limit and the temporary exit time limit are less than 0, the user will transit to the exit state (R).
3.1.2. Model Properties
Algorithm 1: Firmness of opinion |
Algorithm 2: Topic Initiation Ability |
Input: All comments posted and forwarded by the user as the user’s opinion dataset Output: The frequency of idle comments by this user ;
|
3.1.3. Sentiment Orientation
- Collect a vocabulary of positive words, negative words, negative words and degree adverbs;
- Obtain all comments posted and forwarded by the user, and initialize the emotional value for each comment;
- Use a new word-discovery algorithm based on the association confidence of the word segmentation of each user’s opinion data;
- Traverse through the word sequence obtained from step 3 for each statement. If a keyword appears in the positive word library, determine whether the previous word is a definite or degree adverb. If it is a negative word, reduce the value of M by one; If it is a degree adverb, increase the value of M by two; If it is not a negative word or a degree adverb, increase the value of “M” by one; If a keyword appears in the negative word vocabulary, determine whether the previous word is a definite or degree adverb; If it is a negative word, increase the value of M by one; If it is a degree adverb, decrease the value of M by two; If it is not a negative word or degree adverb, decrease the value of M by one.
- Based on step 4, calculate the emotional value of each comment from the user, and the user’s sentiment orientation is , where n is the total number of comments made by the user, is the sentiment orientation value of the user’s i-th comment.
3.2. Model Definition
3.2.1. Preliminary Segmentation
3.2.2. Correlation Confidence
3.2.3. Splitting Conjunctions
- Compute the average correlation confidence for each connecting word and its adjacent word to the left or right; this is the average value of and ;
- If the average correlation confidence values differ between a connecting word and its adjacent word units, the candidate new word undergoes splitting. The split point is determined between the connecting word and the adjacent word units with lower average correlation confidence values.
- When the average correlation confidence value is consistent among a connecting word and its adjacent word units, maintain the merging state of the two word units. Proceed to identifying the next connecting word in the candidate new word.
- Following the aforementioned steps of connecting word splitting, the resulting word unit sequence represents the final word segmentation outcome of the text segment. This sequence encompasses both newly formed words by combining word units and separated connecting words.By implementing the splitting of connecting words within candidate new words, the phrase blocks formed from merging multiple word units can be dismantled. This process effectively reduces the granularity of the final new word result while ensuring semantic coherence. Consequently, the accuracy of the new word result is enhanced.
3.2.4. Emotional Calculation
- When there are no neighboring users posting comments, the user’s emotional value and information entropy are updated to the emotional value and information entropy of the received comments.
- When neighboring users make comments, the user’s emotional value is represented by the product of the impact of their idle comments and the average emotional value of all users neighboring comments; the impact of idle user comments is represented by the product of the average information entropy of all user neighbor comments.
- Establish a fixed duration for users’ participation in an event, setting a permanent exit time limit. This limit decreases by 1 after each round of user engagement in the event. When the permanent exit time limit reaches or falls below 0, the user discontinues their involvement in the event discussion, opting out permanently.
- Upon a user’s initial participation in an event, assign a temporary exit time limit. With each successive round of user activity in the event, this limit decreases by 1 in the absence of any comments from the user. If the temporary exit time limit drops to or below 0, the user’s departure from the event discussion is subject to reconsideration based on the participation discussion rule.
4. Experiments and Results
4.1. SEInR Model
4.2. Information Dissemination with Different Strategy
4.3. Dissemination with Different Time
4.4. Dissemination with Different Thresholds
4.5. Inference
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Numbers | States | Notations |
---|---|---|
1 | Susceptible State (S) | Nodes not involved in public opinion topics |
2 | Exposed State (E) | Nodes involved in public opinion topics |
3 | Infectious State of Information 1 (I1) | Nodes that have been exposed to information of state 1 and have been affected |
… | … | … |
Infectious State of Information n (In) | Nodes that have been exposed to information of state n and have been affected | |
m | Recovered State (R) | Nodes previously participated in a topic have withdrawn from the topic and no longer participate in discussions or dissemination |
Activity degree | Total number of comments () |
Total number of original comments () | |
Dissemination degree | Total number of reposts () |
Total number of responses () | |
Total number of original reposts () | |
Total number of original responses () | |
Total number of likes () |
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Shao, C.; Shao, F.; Liu, X.; Yang, D.; Sun, R.; Zhang, L.; Jiang, K. A Multi-Information Dissemination Model Based on Cellular Automata. Mathematics 2024, 12, 914. https://doi.org/10.3390/math12060914
Shao C, Shao F, Liu X, Yang D, Sun R, Zhang L, Jiang K. A Multi-Information Dissemination Model Based on Cellular Automata. Mathematics. 2024; 12(6):914. https://doi.org/10.3390/math12060914
Chicago/Turabian StyleShao, Changheng, Fengjing Shao, Xin Liu, Dawei Yang, Rencheng Sun, Lili Zhang, and Kaiwen Jiang. 2024. "A Multi-Information Dissemination Model Based on Cellular Automata" Mathematics 12, no. 6: 914. https://doi.org/10.3390/math12060914
APA StyleShao, C., Shao, F., Liu, X., Yang, D., Sun, R., Zhang, L., & Jiang, K. (2024). A Multi-Information Dissemination Model Based on Cellular Automata. Mathematics, 12(6), 914. https://doi.org/10.3390/math12060914