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Featuring, Detecting, and Visualizing Human Sentiment in Chinese Micro-Blog

机译:在中国微博中展示,检测和可视化人类情感

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Micro-blog has been increasingly used for the public to express their opinions, and for organizations to detect public sentiment about social events or public policies. In this article, we examine and identify the key problems of this field, focusing particularly on the characteristics of innovative words, multi-media elements, and hierarchical structure of Chinese "Weibo." Based on the analysis, we propose a novel approach and develop associated theoretical and technological methods to address these problems. These include a new sentiment word mining method based on three wording metrics and point-wise information, a rule set model for analyzing sentiment features of different linguistic components, and the corresponding methodology for calculating sentiment on multi-granularity considering emoticon elements as auxiliary affective factors. We evaluate our new word discovery and sentiment detection methods on a real-life Chinese micro-blog dataset. Initial results show that our new diction can improve sentiment detection, and they demonstrate that ourmulti-level rule set method is more effective, with the average accuracy being 10.2% and 1.5% higher than two existing methods for Chinese micro-blog sentiment analysis. In addition, we exploit visualization techniques to study the relationships between online sentiment and real life. The visualization of detected sentiment can help depict temporal patterns and spatial discrepancy.
机译:微博客已越来越多地用于公众表达意见,以及组织检测关于社会事件或公共政策的公众情绪。在本文中,我们研究并确定了该领域的关键问题,尤其着眼于创新词的特征,多媒体元素以及汉语“微博”的层次结构。在分析的基础上,我们提出了一种新颖的方法,并开发了相关的理论和技术方法来解决这些问题。其中包括一种基于三个措词指标和逐点信息的情感词挖掘新方法,一个用于分析不同语言成分的情感特征的规则集模型以及将表情符号元素作为辅助情感因素的多粒度计算情感的相应方法。我们在真实的中国微博数据集上评估了我们的新词发现和情感检测方法。初步结果表明,我们的新方法可以改善情感检测,并表明我们的多层次规则集方法更有效,其平均准确度比两种现有的中文微博客情感分析方法高出10.2%和1.5%。此外,我们利用可视化技术研究在线情绪与现实生活之间的关系。可视化检测到的情绪可以帮助描述时间模式和空间差异。

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