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首页> 外文期刊>International journal of communication systems >Analytic‐based product opinion detection algorithm for twitter microblogging network
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Analytic‐based product opinion detection algorithm for twitter microblogging network

机译:Twitter微博网络的分析基于型产品意见检测算法

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摘要

Twitter, with an ever-increasing user base, has greatly influenced the opinion and purchase habits of the common masses. This has in turn forced the product firms to get involved with sentiment analysis which enables them to mine the actual opinion about their product and make business decisions accordingly. Even though a majority of the existing methods detect sentiment of the tweet with a reasonable accuracy, few ignore emoticons while others consider them as stop words. Emoticons have enabled the users to express their emotion more accurately which eliminates the ambiguity that can arise with usage of words. The trending popularity of emoticons among the users combined with its ease of usage makes it highly lucrative in sentiment analysis. Hence, mining the product opinion without considering the emoticons will severely undermine the accuracy and reliability of the opinion. Moreover, sarcasm detection is still an uncharted territory in opinion mining and is exceedingly difficult to factor it in. Sarcastic tweets when left undetected will affect the accuracy of the opinion. Therefore, the polarity of the individual words and emoticons of the tweets are computed using linguistic analysis. The sarcastic tweets are then classified and eliminated based on their anomalous polarity. By placing a higher emphasis on emoticons, the proposed emoticon-based linguistic opinion algorithm yields satisfactory results when compared with other traditional and state of the art approaches.
机译:Twitter,具有不断增加的用户群,极大地影响了共同群众的意见和购买习惯。这反过来迫使产品公司参与情感分析,使他们能够挖掘其产品的实际观点,并相应地制造业务决策。尽管大多数现有方法都以合理的准确度检测了推文的情绪,但很少有人忽略表情符号,而其他人认为他们是止损词。表情符号使用户能够更加准确地表达他们的情绪,这消除了使用单词的使用可能产生的模糊性。用户之间的表情符号与其易用性相结合的趋势使其在情感分析方面具有高度利益。因此,在不考虑表情符号的情况下挖掘产品意见将严重破坏意见的准确性和可靠性。此外,讽刺检测仍然是一个在意见挖掘的未明确的领土,非常难以考虑。讽刺推文未被发现会影响意见的准确性。因此,使用语言分析计算推文的各个单词和表情符号的极性。然后基于其异常极性分类和消除讽刺的推文。通过更高强调表情符号,拟议的基于表情符号的语言意见算法在与其他传统和最先进的方法相比时产生令人满意的结果。

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