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UIR-PKU: Twitter-OpinMiner System for Sentiment Analysis in Twitter at SemEval 2015

机译:UIR-PKU:2015年Semeval在Twitter中的Twitter-Optimer系统在Twitter中进行情感分析

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Microblogs are considered as We-Media information with many real-time opinions. This paper presents a Twitter-OpinMiner system for Twitter sentiment analysis evaluation at SemEval 2015. Our approach stems from two different angles: topic detection for discovering the sentiment distribution on different topics and sentiment analysis based on a variety of features. Moreover, we also implemented intra-sentence discourse relations for polarity identification. We divided the discourse relations into 4 predefined categories, including continuation, contrast, condition, and cause. These relations could facilitate us to eliminate polarity ambiguities in compound sentences where both positive and negative sentiments are appearing. Based on the SemEval 2014 and SemEval 2015 Twitter sentiment analysis task datasets, the experimental results show that the performance of Twitter-OpinMiner could effectively recognize opinionated messages and identify the polarities.
机译:微博被视为具有许多实时意见的We-Media信息。本文介绍了2015年SEMEVAL Twitter情绪分析评估的推特考虑系统。我们的方法源于两种不同的角度:主题检测,用于发现基于各种特征的不同主题和情感分析的情绪分布。此外,我们还实施了句子内话语关系以进行极性识别。我们将话语关系分为4个预定义类别,包括延续,对比,条件和原因。这些关系可以促进我们消除复合句子中的极性歧义,其中阳性和消极情绪都出现。基于2014年SEMEVAL和SEMEVAL 2015 Twitter情感分析任务数据集,实验结果表明,Twitter-Optiminer的性能可以有效地识别自由的消息并识别极性。

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