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A word-emoticon mutual reinforcement ranking model for building sentiment lexicon from massive collection of microblogs

机译:从大量微博中构建情感词典的单词表情互助排序模型

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摘要

Recently, more and more researchers have focused on the problem of analyzing people’s sentiments and opinions in social media. The sentiment lexicon plays a crucial role in most sentiment analysis applications. However, the existing thesaurus based lexicon building methods suffer from the coverage problems when faced with the new words and new meanings in social media. On the other hand, the previous learning based methods usually need intensive expert efforts for annotating training datasets or designing extraction patterns. In this paper, we observe that the graphical emoticons are good natural sentiment labels for the corresponding microblog posts and a word-emoticon mutual reinforcement ranking model is proposed to learn the sentiment lexicon from the massive collection of microblog data. We integrate the emoticons and candidate sentiment words in the microblogs to construct a two-layer graph, on which a random walk is run for extracting the top ranked words as a sentiment lexicon. Extensive experiments were conducted on a benchmark dataset with various topics. The results validate the effectiveness of the proposed methods in building sentiment lexicon from microblog data.
机译:近来,越来越多的研究人员致力于在社交媒体上分析人们的情绪和观点的问题。在大多数情感分析应用程序中,情感词典都扮演着至关重要的角色。然而,当面对社交媒体中的新词和新含义时,现有的基于词库的词典构建方法遭受覆盖问题。另一方面,以前的基于学习的方法通常需要大量的专家工作来注释训练数据集或设计提取模式。在本文中,我们观察到图形表情符号是相应微博帖子的良好自然情感标签,并提出了一种词表情互助排序模型,以从大量微博数据中学习情感词典。我们将表情符号和候选情感词整合到微博中,以构建一个两层图,在该图上运行随机游走以提取排名最高的单词作为情感词典。在具有各种主题的基准数据集上进行了广泛的实验。结果证实了所提出的方法从微博数据中构建情感词典的有效性。

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