指南针:美国大选的时空情感分析——推特在说什么!

Debjyoti Paul, Feifei Li, M. K. Teja, Xin Yu, R. Frost
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引用次数: 55

摘要

随着各种社交网络工具和平台的广泛发展,通过社交媒体数据分析和理解社会对重要和新兴社会问题和事件的反应和人群反应日益成为一个重要的问题。然而,由于社交媒体数据的非结构化和嘈杂性,在有效和高效地实现这一目标方面存在许多挑战。大量的底层数据也带来了根本性的挑战。此外,在许多应用程序场景中,发现基于地理和/或时间分区的模式和趋势,并跟踪它们如何随时间变化,通常是有趣的,在某些情况下是关键的。这就提出了从大规模社交媒体数据中进行时空情感分析的有趣问题。本文通过一个名为“2016年美国大选,推特说了什么”的数据科学项目来调查这个问题。其目标是利用2016年美国总统大选前6个月的大量地理标记推文,在任意时间间隔内发现推特上对美国县和州一级民主党或共和党的情绪。我们的研究结果表明,通过整合和开发机器学习和数据管理技术的组合,可以大规模地做到这一点,并产生有效的结果。我们项目的结果有可能适用于解决和影响其他有趣的社会问题,如建立社区幸福和健康指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compass: Spatio Temporal Sentiment Analysis of US Election What Twitter Says!
With the widespread growth of various social network tools and platforms, analyzing and understanding societal response and crowd reaction to important and emerging social issues and events through social media data is increasingly an important problem. However, there are numerous challenges towards realizing this goal effectively and efficiently, due to the unstructured and noisy nature of social media data. The large volume of the underlying data also presents a fundamental challenge. Furthermore, in many application scenarios, it is often interesting, and in some cases critical, to discover patterns and trends based on geographical and/or temporal partitions, and keep track of how they will change overtime. This brings up the interesting problem of spatio-temporal sentiment analysis from large-scale social media data. This paper investigates this problem through a data science project called "US Election 2016, What Twitter Says". The objective is to discover sentiment on Twitter towards either the democratic or the republican party at US county and state levels over any arbitrary temporal intervals, using a large collection of geotagged tweets from a period of 6 months leading up to the US Presidential Election in 2016. Our results demonstrate that by integrating and developing a combination of machine learning and data management techniques, it ispossible to do this at scale with effective outcomes. The results of our project have the potential to be adapted towards solving and influencing other interesting social issues such as building neighborhood happiness and health indicators.
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