动态的新闻事件和社会媒体的反应

Mikalai Tsytsarau, Themis Palpanas, M. Castellanos
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引用次数: 68

摘要

对网络上表达的社会情感的分析与各种各样的应用越来越相关,为了能够预测未来的这些变化,理解以某种方式驱动情感演变的潜在机制是很重要的。在本文中,我们研究了新闻事件的动态及其与相关话题表达情绪变化的关系。我们提出了一个新的框架,该框架将新闻和社交媒体对事件的反应行为建模为事件重要性与媒体反应函数之间的卷积,具体到媒体和事件类型。该框架适用于从出版物量的时间序列中检测事件的时间和持续时间,以及它们的影响和动态。这些数据可以极大地增强事件分析;例如,它们可以帮助区分重要事件和不重要事件,或者预测市场情绪和股市走势。作为这种应用的一个例子,我们提取了各种主题的新闻事件,然后将这些数据与相应的情绪时间序列相关联,揭示了情绪变化与事件动态之间的联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamics of news events and social media reaction
The analysis of social sentiment expressed on the Web is becoming increasingly relevant to a variety of applications, and it is important to understand the underlying mechanisms which drive the evolution of sentiments in one way or another, in order to be able to predict these changes in the future. In this paper, we study the dynamics of news events and their relation to changes of sentiment expressed on relevant topics. We propose a novel framework, which models the behavior of news and social media in response to events as a convolution between event's importance and media response function, specific to media and event type. This framework is suitable for detecting time and duration of events, as well as their impact and dynamics, from time series of publication volume. These data can greatly enhance events analysis; for instance, they can help distinguish important events from unimportant, or predict sentiment and stock market shifts. As an example of such application, we extracted news events for a variety of topics and then correlated this data with the corresponding sentiment time series, revealing the connection between sentiment shifts and event dynamics.
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