Sentiment and Emotion Analysis for Social Multimedia: Methodologies and Applications

Quanzeng You
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引用次数: 32

Abstract

Online social networks have attracted the attention from both the academia and real world. In particular, the rich multimedia information accumulated in recent years provides an easy and convenient way for more active communication between people. This offers an opportunity to research people's behaviors and activities based on those multimedia content. One emerging area is driven by the fact that these massive multimedia data contain people's daily sentiments and opinions. However, existing sentiment analysis typically focuses on textual information regardless of the visual content, which may be as informative in expressing people's sentiments and opinions. In this research, we attempt to analyze the online sentiment changes of social media users using both the textual and visual content. Nowadays, social media networks such as Twitter have become major platforms of information exchange and communication between users, with tweets as the common information carrier. As an old saying has it, an image is worth a thousand words. The image tweet is a great example of multimodal sentiment. In this research, we focus on sentiment analysis based on visual and multimedia information analysis. We will review the state-of-the-art in this topic. Several of our projects related to this research area will also be discussed. Experimental results are included to demonstrate and summarize our contributions.
社交多媒体的情感与情绪分析:方法与应用
在线社交网络已经引起了学术界和现实世界的关注。特别是近年来积累的丰富的多媒体信息,为人们之间更加主动的交流提供了一种简单便捷的方式。这为基于这些多媒体内容研究人们的行为和活动提供了机会。这些海量的多媒体数据包含了人们的日常情绪和观点,这一事实推动了一个新兴领域的发展。然而,现有的情感分析通常只关注文本信息,而忽略了视觉内容,而视觉内容在表达人们的情绪和观点方面可能同样具有信息性。在本研究中,我们尝试使用文本和视觉内容来分析社交媒体用户的在线情绪变化。如今,Twitter等社交媒体网络已经成为用户之间信息交流和沟通的主要平台,推文是常见的信息载体。俗话说得好,一图胜千言。图片推特是多模式情感的一个很好的例子。在本研究中,我们重点研究了基于视觉和多媒体信息分析的情感分析。我们将回顾这个主题的最新进展。我们的几个与这个研究领域相关的项目也将被讨论。实验结果证明和总结了我们的贡献。
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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