Using Social Media for Emergency Response and Urban Sustainability: A Case Study of the 2012 Beijing Rainstorm
Abstract
:1. Introduction
2. Related Work
3. Social Media and Its Data Characteristics
- (1)
- Short, topical text messages: Different from other blogging sites, the length of Sina-Weibo text messages is limited to 140 words or less, and emoticons are allowed to express emotions. During emergency events, the concerns of different groups are often different. For example, those who dispatch resources to affected areas would have different concerns from what the victims are concerned with. These would also change over time as emergency events developed. Topical tags of the text messages help followers to discern them based on their interests and needs.
- (2)
- Time-sensitivity: the popularity of smart handheld mobile devices and the development of modern communication technology make it easier to publish one’s thoughts and ideas via Sina-Weibo. When an emergency occurs, affected individuals usually post the information of the events to social networks immediately. People in social networks can publish their concerns, views, or even suggestions about the events after seeing the information. The timely posting and discussions reflect how people are concerned with the events and, in many cases, also where these people are located.
- (3)
- Location information: Sina-Weibo encourages users to share location information. By analyzing the Sina-Weibo published in 2013, we find that 6.656% of the total number of Sina-Weibo contains GPS information.
4. Emergency Information Mining and Analysis
4.1. The Classification and Location of Emergency Information
- (1)
- For the original Sina-Weibo texts, Chinese word segmentation was applied to the original Sina-Weibo text first. In addition, Sina-Weibo emoticons, which conveyed important semantic information, should be added to the dictionary for Chinese word segmentation. Then, stop words, which are composed by a pointless word, are removed.
- (2)
- Using LDA topic model for the Sina-Weibo text after data pre-processing, we obtained two lists. One is Topic-Terminology lists, and the other is Document-Topic lists, and the Document-Topic lists obtained from LDA was regarded as training samples for SVM.
- (3)
- When a new Sina-Weibo text was acquired, we identified the category to which it belonged by applying the SVM algorithm.
- (4)
- In order to display Sina-Weibo texts by topics, we geotaged the Sina-Weibo that contain GPS information.
- (5)
- In regular time intervals, re-do the step (1) and the step (2), so that the emergency information classification model was adapted to new Sina-Weibo texts.
1 | 2 | 3 | 4 | 5 | Total | |
---|---|---|---|---|---|---|
accuracy | 89.8% | 83.7% | 91.4% | 87.1% | 85.5% | 87.5% |
4.2. Trend Analysis
4.2.1. Overall Trend
4.2.2. Trend of Topics under Discussion
4.3. Spatial Analysis
4.3.1. Explore of Rainstorm-Related Sina-Weibo
4.3.2. Distribution of the Sina-Weibo under Different Topics in Space
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Wang, Y.; Wang, T.; Ye, X.; Zhu, J.; Lee, J. Using Social Media for Emergency Response and Urban Sustainability: A Case Study of the 2012 Beijing Rainstorm. Sustainability 2016, 8, 25. https://doi.org/10.3390/su8010025
Wang Y, Wang T, Ye X, Zhu J, Lee J. Using Social Media for Emergency Response and Urban Sustainability: A Case Study of the 2012 Beijing Rainstorm. Sustainability. 2016; 8(1):25. https://doi.org/10.3390/su8010025
Chicago/Turabian StyleWang, Yandong, Teng Wang, Xinyue Ye, Jianqi Zhu, and Jay Lee. 2016. "Using Social Media for Emergency Response and Urban Sustainability: A Case Study of the 2012 Beijing Rainstorm" Sustainability 8, no. 1: 25. https://doi.org/10.3390/su8010025
APA StyleWang, Y., Wang, T., Ye, X., Zhu, J., & Lee, J. (2016). Using Social Media for Emergency Response and Urban Sustainability: A Case Study of the 2012 Beijing Rainstorm. Sustainability, 8(1), 25. https://doi.org/10.3390/su8010025