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Discover the Spatio-temporal Process of Typhoon Disaster Using Micro blog Data

机译:使用Micro Blog数据发现台风灾难的时空过程

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When a disaster occurs, a large number of images and texts attached geographic information often flood the social network in the Internet quickly. All these information provide a new data source for timely awareness of disaster situations. However, due to the regional variation in the number of social media users and characteristics of information propagate in cyberspace, new problems arose in the pattern analysis of spatial point process represented by the check-in data, such as the correlation between check-in points density and disasters events density, the spatial relation between check-in points, the spatial heterogeneity of point pattern and associated influences. In this study, we took the No. 201614 Typhoon as an example and collected Sina Weibo data between September 14 and September 17, 2016 using keywords “Typhoon” and “Meranti”. We classified the Weibo texts using Support Vector Machine(SVM) algorithms, and constructed a disaster database containing relevant check-in information. In addition, considering the spatial heterogeneity of Weibo users, we proposed a weighted model based on user activity at the check-in points. Using Moran’s I of the global autocorrelation statistics, we compared the check-in data before and after adding weights and discovered obvious spatial autocorrelation of the check-in data in real geographical locations. We tested our model on Weibo data with keyword “rain” and “power failure”. The results show that series map generated by our model can reflect the typhoon disaster spatio-temporal process trends well.
机译:发生灾难时,大量的图像和文本附加了地理信息经常快速泛滥的社交网络。所有这些信息都提供了一种新的数据源,以及时了解灾难情况。但是,由于社交媒体用户数量的区域变化和信息的特征在网络空间中传播,新问题在检查数据所代表的空间点过程的模式分析中出现,例如检查点之间的相关性密度和灾害事件密度,检查点之间的空间关系,点模式的空间异质性和相关影响。在这项研究中,我们将201614号台风在2016年9月14日至9月17日之间收集了新浪微博数据,使用关键词“台风”和“Meranti”。我们使用支持向量机(SVM)算法分为Weibo文本,并构建了包含相关登记信息的灾难数据库。此外,考虑到微博用户的空间异质性,我们提出了一种基于检查点的用户活动的加权模型。使用莫兰的I中的全局自相关统计数据,我们在添加权重之前和之后比较了登记数据,并在真实地理位置中发现了签入数据的明显空间自相关。我们在带有关键字“rain”和“电源故障”的Weibo数据上测试了我们的模型。结果表明,我们的模型产生的系列地图可以反映台风灾害时空流程趋势。

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