从社交媒体分析到无处不在的事件监控:以土耳其推特为例

A. Erdogan, Tolga Yilmaz, Onur Can Sert, Mirun Akyüz, Tansel Özyer, R. Alhajj
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引用次数: 5

摘要

本文中描述的工作说明了社交媒体是如何成为有价值的数据来源的,这些数据可以用于信息知识发现,这可能有助于更好的决策。我们把Twitter作为要处理的数据的来源。特别是,我们提取并捕获了用土耳其语写的推文。我们分析了在线和实时的推文,以确定最近的趋势事件,它们的位置和时间。其结果可能有助于预测下一个热点事件将在新闻中播出。它也可以对即将到来或正在发生的灾难或应该避免的事件发出警告,如交通堵塞、恐怖袭击、地震、洪水、风暴、火灾等。为了实现这一点,一条tweet可能会被标记为多个事件。将命名实体识别与多项朴素贝叶斯和随机梯度下降相结合。95%的成功率证明了该方法的适用性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Social Media Analysis to Ubiquitous Event Monitoring: The case of Turkish Tweets
The work described in this paper illustrates how social media is a valuable source of data which may be processed for informative knowledge discovery which may help in better decision making. We concentrate on Twitter as the source for the data to be processed. In particular, we extracted and captured tweets written in Turkish. We analyzed tweets online and real-time to determine most recent trending events, their location and time. The outcome may help predicting next hot events to be broadcasted in the news. It may also raise alert and warn people related to upcoming or ongoing disaster or an event which should be avoided, e.g., traffic jam, terror attacks, earthquake, flood, storm, fire, etc. To achieve this, a tweet may be labeled with more than one event. Named entity recognition combined with multinomial naive Bayes and stochastic gradient descent have been integrated in the process. The reported 95% success rate demonstrate the applicability and effectiveness of the proposed approach.
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