TagNet: Toward Tag-Based Sentiment Analysis of Large Social Media Data

Yang Chen
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引用次数: 9

Abstract

Hashtags and replies, originally introduced on Twitter, have become the most popular ways to tag short messages in social networks. While the primary uses of these human-labeled metadata are still for message retrieval and clustering, there have been increasing attempts to use them as subject or topic indicators in measuring people's continuous sentiments in large message corpora. However, conducting the analysis for large social media data is still challenging due to the message volume, heterogeneity, and temporal dependence. In this paper, we present TagNet, a novel visualization approach tailored to the tag-based sentiment analysis. TagNet combines traditional tag clouds with an improved node-link diagram to represent the time-varying heterogeneous information with reduced visual clutter. A force model is leveraged to generate layout aesthetics from which the temporal patterns of tags can be easily compared across different subsets of data. It is enhanced by visual encodings for quickly estimating the time-varying sentiment. Interaction tools are provided to improve the scalability for exploring large corpora. An example Twitter corpus illustrates the applicability and usefulness of TagNet.
TagNet:迈向基于标签的大型社交媒体数据情感分析
标签和回复最初是在Twitter上引入的,现在已经成为社交网络上最流行的短信标签方式。虽然这些人工标记的元数据的主要用途仍然是用于消息检索和聚类,但已经有越来越多的尝试将它们用作主题或主题指标,以测量大型消息语料库中人们的持续情绪。然而,由于消息量、异质性和时间依赖性,对大型社交媒体数据进行分析仍然具有挑战性。在本文中,我们提出了TagNet,一种针对基于标签的情感分析量身定制的新颖可视化方法。TagNet将传统的标签云与改进的节点链接图相结合,在减少视觉杂乱的情况下表示时变的异构信息。利用力模型生成布局美学,可以很容易地跨不同的数据子集比较标记的时间模式。通过视觉编码来快速估计随时间变化的情绪。提供交互工具以提高探索大型语料库的可伸缩性。一个Twitter语料库示例说明了TagNet的适用性和有用性。
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