基于地理空间的情感:微博事件检测机制

Samer Muthana Sarsam, H. Al-Samarraie, Bahiyah Omar
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引用次数: 12

摘要

利用微博中的情感来追踪某些事件的发生并确定它们的位置,是情感分析的一个公开挑战。本研究调查了基于推文中嵌入的情感类型(极性程度)与这些推文的源位置之间的现有联系来检测事件地理位置的潜力。使用K-means算法对提取的推文进行聚类,并使用Naïve贝叶斯算法建立预测模型。然后,运用线性回归分析的时间序列预测技术。这种方法被用来预测与感兴趣的事件相关的情绪数量。纬度和经度用于评估实时世界地图上线性回归模型的结果。结果表明,快乐情绪往往是探测事件地理位置的可靠来源。本研究揭示了使用时间序列预测方法来调查twitter消息中的情绪程度的可行性。
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Geo-spatial-based Emotions: A Mechanism for Event Detection in Microblogs
The use of emotions in microblogs to trace the occurrence of certain events and determine their locations is an open challenge for sentiment analysis. This study investigated the potential of detecting the geographical location of events based on existing linkages between the types of emotion embedded in tweets (degree of polarity) and the source location of those tweets. The extracted tweets were clustered using K-means algorithm and a predictive model was developed using Naïve Bayes algorithm. Then, a time series forecasting technique was applied using linear regression analysis. This method was used to predict the amount of emotions in association with the event of interest. Latitude and longitude were used to evaluate the results of the linear regression model on a real-time world map. Results showed that happy emotion tends to be a reliable source for detecting the geographical location of an event. This study revealed the feasibility of using the time series forecasting approach in investigating the degree of emotions in twitter messages.
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