K2: A Novel Data Analysis Framework to Understand US Emotions in Space and Time

Romita Banerjee, Karima Elgarroussi, Sujing Wang, Akhil Talari, Yongli Zhang, C. Eick
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Abstract

Twitter is one of the most popular social media platforms used by millions of users daily to post their opinions and emotions. Consequently, Twitter tweets have become a valuable knowledge source for emotion analysis. In this paper, we present a new framework, K2, for tweet emotion mapping and emotion change analysis. It introduces a novel, generic spatio-temporal data analysis and storytelling framework that can be used to understand the emotional evolution of a specific section of population. The input for our framework is the location and time of where and when the tweets were posted and an emotion assessment score in the range [Formula: see text], with [Formula: see text] representing a very high positive emotion and [Formula: see text] representing a very high negative emotion. Our framework first segments the input dataset into a number of batches with each batch representing a specific time interval. This time interval can be a week, a month or a day. By generalizing existing kernel density estimation techniques in the next step, we transform each batch into a continuous function that takes positive and negative values. We have used contouring algorithms to find the contiguous regions with highly positive and highly negative emotions belonging to each member of the batch. Finally, we apply a generic, change analysis framework that monitors how positive and negative emotion regions evolve over time. In particular, using this framework, unary and binary change predicate are defined and matched against the identified spatial clusters, and change relationships will then be recorded, for those spatial clusters for which a match occurs. We also propose animation techniques to facilitate spatio-temporal data storytelling based on the obtained spatio-temporal data analysis results. We demo our approach using tweets collected in the state of New York in the month of June 2014.
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K2:一种新的数据分析框架来理解美国人在空间和时间上的情绪
推特是最受欢迎的社交媒体平台之一,每天有数百万用户使用它来发布他们的观点和情绪。因此,Twitter tweets已成为情感分析的宝贵知识来源。在本文中,我们提出了一个新的框架,K2,用于tweet情绪映射和情绪变化分析。它引入了一种新颖的、通用的时空数据分析和叙事框架,可用于理解特定人群的情感演变。我们框架的输入是tweet发布的地点和时间,以及在[公式:见文本]范围内的情绪评估得分,其中[公式:见文本]代表非常高的积极情绪,[公式:见文本]代表非常高的消极情绪。我们的框架首先将输入数据集分割成多个批次,每个批次代表一个特定的时间间隔。这个时间间隔可以是一周、一个月或一天。在下一步中,通过推广现有的核密度估计技术,我们将每个批转换为一个取正值和负值的连续函数。我们使用等高线算法来找到属于批处理每个成员的具有高度积极和高度消极情绪的连续区域。最后,我们应用了一个通用的变化分析框架来监测积极和消极情绪区域如何随着时间的推移而演变。特别是,使用该框架,定义一元和二元变化谓词,并针对已识别的空间集群进行匹配,然后记录发生匹配的空间集群的变化关系。我们还提出了基于获得的时空数据分析结果的动画技术,以促进时空数据的故事叙述。我们使用2014年6月在纽约州收集的tweet来演示我们的方法。
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