A New Geo-Propagation Model of Event Evolution Chain Based on Public Opinion and Epidemic Coupling
Abstract
:1. Introduction
2. Overview and Data Introduction of the Research Area
2.1. Overview of the Research Area
2.2. Data Sources and Preprocessing
3. Methods
3.1. Directional Distribution and Center of Gravity Shift Models
3.2. Cluster and Outlier Analysis
3.3. Complex Network Construction Based on the Gravitational Model
3.4. Disaster Evolutionary Chains and Community Structure Discovery Algorithms
- Degree of a node: in a directed graph, the number of arc end bars of a node is the out-degree of a node, the number of arc head bars of a node is the in-degree of a node, and . The degree of nodality indicates influence in the epidemic network, where the in-degree indicates the causative event that led to the node’s infection and the out-degree indicates the infection event triggered by the node, the value of them is determined by the system network topology. The greater the node’s out-degree, the more severe the consequences of the node on its neighbors; the greater the in-degree, the more pathways leading to the node, and the more difficult it is to control.
- Betweenness centrality is an indicator of a node’s centrality in a network. It is equal to the number of shortest paths from all vertices to all others that pass through that node. A node with high betweenness centrality has a large influence on the transfer of items through the network, under the assumption that item transfer follows the shortest paths [44].
- Closeness centrality (or closeness) of a node is a measure of centrality in a network, calculated as the reciprocal of the sum of the length of the shortest paths between the node and all other nodes in the graph. Thus, the more central a node is, the closer it is to all other nodes [45].
- A higher PageRank means that the node is more likely to be accessed, and the number of links pointing to the node has a higher link weight [46].
- Average shortest path length reflects the average distance between all nodes and the overall efficiency of the network.
- Average clustering coefficient reflects the average connection tightness of all nodes in the network.
- In complex network diagrams, a higher graph density represents a tighter network connection; a higher degree of modularity represents a more pronounced community structure; a smaller network diameter represents better accessibility between points.
4. Results
4.1. Stages of Public Opinion Development and Shift in Focus
- The period from 10 January to 19 January, during which the number of public opinion changes on Weibos was relatively stable,
- the period from 20 January to 25 January, during which the number of discussions on Weibos increased sharply, can be described as a period of rapid growth in public opinion discussions, which was related to the phenomenon of “human-to-human transmission” as confirmed by academician Zhong Nanshan, followed by the continued fermentation of the pneumonia outbreak. On 23 January 2020 at 10:00 a.m., Wuhan declared to close the city, which is the first time in human history that the toughest epidemic prevention measures have been taken against a major city of 10 million.
- From 26 January to 31 January, during the Spring Festival, the number of discussions on social media rapidly declined, and the focus of netizens shifted;
- from 1 February to 6 February, the number of discussions fluctuated, but still at a low level, during this period, the Huoshenshan Hospital delivered and built 11 new hospitals.
- From 7 February to 8 February, the number of public opinions on Weibo reached a small peak in Wuhan residents’ discussion of the epidemic;
- from 9 February to 10 February, the heat of the previous discussion had faded, and the medical staff completed the nucleic acid testing of all suspected patients.
- From 11 February to 13 February, discussions reached another peak due to the closed management of all residential areas;
- from 14 February to 17 February, related public opinion discussions gradually decreased amid fluctuations. During this period, the closed management of residential areas was further strengthened, and residents’ focus was on the official rumor dispelling information in addition to the epidemic itself.
4.2. Testing with Spatial Anomalies
4.3. Geo-Propagation Model of Event Evolution Chain and Complex Network Structure Analysis
4.4. Discussion of Node and Network Characteristics
4.4.1. Spatial Distribution Characteristics of Key Nodes
4.4.2. Risk Assessment of Key Node-Induced Infections
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Label | Degree | Pageranks | Clustering | Weighted Degree | Closness Centrality | Betweeness Centrality | |
---|---|---|---|---|---|---|---|
Donghu Park | 186 | 0.004754 | 0.300763 | 12,686.20319 | 0.476528 | 9205.180589 | |
Meilin City | 138 | 0.004209 | 0.347815 | 16,319.48388 | 0.446103 | 1866.0054 | |
Wutie Jiayuan | 158 | 0.004872 | 0.317608 | 16,395.65837 | 0.457094 | 3752.134351 | |
Hankow Park | 164 | 0.005962 | 0.212774 | 16,608.994 | 0.477798 | 11,537.64855 | |
HuaTeng Park | 135 | 0.003562 | 0.394234 | 7327.18642 | 0.423956 | 962.671439 | |
Baoli City | 118 | 0.003749 | 0.436314 | 12,921.92453 | 0.433521 | 966.821575 | |
Youth City | 102 | 0.005272 | 0.306832 | 24,364.07104 | 0.392414 | 5848.676701 | |
LiujiaWan | 179 | 0.005157 | 0.242002 | 9308.111524 | 0.481647 | 9079.850222 | |
Tujia Gou | 188 | 0.006043 | 0.218761 | 28,789.36615 | 0.522838 | 19,417.4878 | |
Jindi City | 96 | 0.002979 | 0.56317 | 10,283.52847 | 0.415444 | 538.549386 | |
Zhongtie Gardens | 122 | 0.004012 | 0.394547 | 11,707.94896 | 0.446473 | 1570.912302 | |
Changhui | 107 | 0.00426 | 0.300541 | 5782.64739 | 0.437754 | 2911.917668 | |
Xinyuan | 97 | 0.003154 | 0.469471 | 18,890.79875 | 0.389291 | 309.077417 | |
East Lake World | 128 | 0.003599 | 0.382342 | 7953.101602 | 0.452481 | 3471.562605 | |
Water Land | 116 | 0.004507 | 0.323293 | 21,928.30106 | 0.474009 | 2566.284983 |
Label | Degree | Pageranks | Clustering | Weighted Degree | Closness Centrality | Betweeness Centrality | |
---|---|---|---|---|---|---|---|
Shihua Community | 158 | 0.005106 | 0.293181 | 27,739.97498 | 0.452481 | 3200.213496 | |
Tangjiadun | 200 | 0.006903 | 0.173837 | 23,380.43404 | 0.481216 | 12,506.69791 | |
Tujiagou | 188 | 0.006043 | 0.218761 | 28,789.36615 | 0.522838 | 19,417.4878 | |
Garden Community | 124 | 0.004718 | 0.316876 | 20,042.3545 | 0.489091 | 4804.814393 | |
Democratic Road | 174 | 0.005566 | 0.234323 | 8980.640317 | 0.491773 | 8158.937741 | |
Badajia Garden | 149 | 0.003735 | 0.401493 | 120,230.4021 | 0.440622 | 2506.23708 | |
EastGate Community | 164 | 0.004989 | 0.26087 | 9533.004756 | 0.476106 | 4030.957155 | |
Songtao Garden | 152 | 0.005291 | 0.258065 | 11,764.26325 | 0.492223 | 7989.833793 | |
LiujiaWan | 179 | 0.005157 | 0.242002 | 9308.111524 | 0.481647 | 9079.850222 | |
Gangdu Garden | 149 | 0.004185 | 0.359463 | 16,996.93004 | 0.444628 | 2181.494609 | |
Peace Community | 115 | 0.00362 | 0.308005 | 2224.0032 | 0.452481 | 1673.350427 | |
Gahua Village Street | 140 | 0.004398 | 0.376344 | 91,838.00845 | 0.458262 | 5154.892949 | |
Tongxin Garden | 146 | 0.005264 | 0.239945 | 23,130.46086 | 0.467014 | 7360.411703 | |
Wuheli Community | 103 | 0.003893 | 0.311475 | 10,964.77266 | 0.431435 | 3505.984432 | |
Mei-Yin Temple | 134 | 0.004719 | 0.331766 | 34,497.7463 | 0.469459 | 2359.869308 |
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Zhang, Y.; Chen, N.; Du, W.; Yao, S.; Zheng, X. A New Geo-Propagation Model of Event Evolution Chain Based on Public Opinion and Epidemic Coupling. Int. J. Environ. Res. Public Health 2020, 17, 9235. https://doi.org/10.3390/ijerph17249235
Zhang Y, Chen N, Du W, Yao S, Zheng X. A New Geo-Propagation Model of Event Evolution Chain Based on Public Opinion and Epidemic Coupling. International Journal of Environmental Research and Public Health. 2020; 17(24):9235. https://doi.org/10.3390/ijerph17249235
Chicago/Turabian StyleZhang, Yan, Nengcheng Chen, Wenying Du, Shuang Yao, and Xiang Zheng. 2020. "A New Geo-Propagation Model of Event Evolution Chain Based on Public Opinion and Epidemic Coupling" International Journal of Environmental Research and Public Health 17, no. 24: 9235. https://doi.org/10.3390/ijerph17249235
APA StyleZhang, Y., Chen, N., Du, W., Yao, S., & Zheng, X. (2020). A New Geo-Propagation Model of Event Evolution Chain Based on Public Opinion and Epidemic Coupling. International Journal of Environmental Research and Public Health, 17(24), 9235. https://doi.org/10.3390/ijerph17249235