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SentiView: A visual sentiment analysis framework

机译:SentiView:视觉情感分析框架

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In the past few years, micro-blogging platforms, such as twitter, are becoming most popular online social networks. Different opinions and news can be shared about various aspects and occasions using these micro-blogging platforms. Twitter is therefore considered as a rich source of data and it can be used for different text analysis and decision making tasks. The main focus of sentiment analysis is about text classification into positiveegativeeutral feelings based on the polarity of text. The opinions and thoughts on twitter feeds can be expressed in any language. Previous techniques have some limitations in the field of sentiment analysis such as low accuracy, sarcasm, and incorrect classification of tweets. The proposed research focuses on the existing difficulties and complications and presents a framework, for the sentiment detection of twitter feeds, which results in high accuracy and real time performance. There are various pre-processing steps that are applied on twitter feeds to refine them before feeding for sentiment classification. The pre-processing removes slangs and abbreviations with complete words. Three different classification techniques are then used; emoticon analysis, Bag of words and SentiWordNet. The experimental evaluation confirms that the proposed algorithm dynamically increases the precision, recall, f-measure and most importantly accuracy when compared with other similar techniques.
机译:在过去的几年中,微博平台(例如twitter)正成为最受欢迎的在线社交网络。使用这些微博客平台可以就各个方面和场合共享不同的观点和新闻。因此,Twitter被认为是丰富的数据源,可用于不同的文本分析和决策任务。情感分析的主要重点是根据文本的极性将文本分为积极/消极/中立的感觉。关于Twitter feed的观点和想法可以用任何语言表达。先前的技术在情感分析领域有一些局限性,例如准确性低,讽刺和​​推文分类不正确。拟议的研究集中在现有的困难和复杂性上,并提出了一个框架,用于Twitter提要的情绪检测,从而实现了高精度和实时性能。在Twitter提要上应用了各种预处理步骤,以在提要之前对它们进行精炼以进行情感分类。预处理将删除带有完整单词的语和缩写。然后使用三种不同的分类技术。表情符号分析,单词袋和SentiWordNet。实验评估证实,与其他类似技术相比,该算法可动态提高精度,查全率,f测度和最重要的准确性。

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