Localization of Events Using Neural Networks in Twitter Data

Usman Anjum, V. Zadorozhny, P. Krishnamurthy
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引用次数: 3

Abstract

Twitter (one example of microblogging) is widely being used by researchers to understand human behavior, specifically how people behave when a significant event occurs and how it changes user microblogging patterns. The changing microblogging behavior can reveal patterns that can help in detecting real-world events. However, the Twitter data that is available has limitations, such as, it is incomplete and noisy and the samples are irregular. In this paper we create a model, called Twitter Behavior Agent-Based Model (TBAM) to simulate Twitter pattern and behavior using Agent-Based Modeling (ABM). The generated data from ABM simulations can be used in place or to complement the real-world data toward improving the accuracy of event detection. We confirm the validity of our model by finding the cross-correlation between the real data collected from Twitter and the data generated using TBAM.
推特数据中使用神经网络的事件定位
Twitter(微博的一个例子)被研究人员广泛用于理解人类行为,特别是当重大事件发生时人们的行为以及它如何改变用户的微博模式。不断变化的微博行为可以揭示有助于检测现实世界事件的模式。然而,可用的Twitter数据有局限性,例如,它是不完整的,有噪声的,样本是不规则的。在本文中,我们创建了一个模型,称为Twitter行为基于代理的模型(TBAM)来模拟Twitter的模式和行为使用基于代理的建模(ABM)。从ABM模拟生成的数据可以用于适当的地方或补充真实世界的数据,以提高事件检测的准确性。通过发现从Twitter收集的真实数据与使用tam生成的数据之间的相互关系,我们证实了模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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