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A Dynamic Conditional Random Field Based Framework for Sentence-Level Sentiment Analysis of Chinese Microblog

机译:基于动态条件随机场的中文微博句级情感分析框架

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With the increasing popularity of social media, the Sentiment Analysis (SA) of the Microblog has raised as a new research topic. In this paper, we present WDCRF: a Word2vec and Dynamic Conditional Random Field (DCRF) based framework for Sentiment Analysis of Chinese Microblog. Our contributions include: firstly, to address drawbacks of Microblog message such as the length and Lexicon limitations, Word2vec technology is leveraged to enrich Microblog message so that each word individual is extended by its Top-k similar words. Secondly, DCRF model is utilized to combine and conduct the Subjectivity Classification and Polarity Classification simultaneously, while in existing works they are designed as independent and the relationship between two types of classifications is ignored. Moreover, the DCRF model considers not only the classification-level relationship but also the relationship between neighboring sentences. Finally, the experiments on real dataset collected from Sina and Tencent Weibo demonstrate that our WDCRF (Word2vec + DCRF) achieves much better than the state-of-the-art.
机译:随着社交媒体的日益普及,微博的情感分析(SA)成为新的研究课题。在本文中,我们提出了WDCRF:基于Word2vec和动态条件随机场(DCRF)的中文微博情感分析框架。我们的贡献包括:首先,为了解决Microblog消息的缺点,例如长度和Lexicon限制,利用Word2vec技术来丰富Microblog消息,以便每个单词都由其Top-k相似单词扩展。其次,DCRF模型被用来同时结合和进行主观分类和极性分类,而在现有作品中它们被设计为独立的,并且忽略了两种分类之间的关系。此外,DCRF模型不仅考虑分类级别的关系,而且考虑相邻句子之间的关系。最后,从新浪和腾讯微博收集的真实数据集上的实验表明,我们的WDCRF(Word2vec + DCRF)比最新技术要好得多。

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