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Emotion Analysis in Text using TF-IDF

机译:使用TF-IDF的文本中的情感分析

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摘要

A myriad of the population has adapted to the evolving technology, which includes text communication. Users advertently or inadvertently share emotions. As we know, emotions are one of the most critical aspects of human life; they impact human's behavior, thinking, compelling of action, and most important, decision making. There are many alleged emotions known to us, and each having its significance. In this era of modern technology, it is hard to find any unexplored area; this applies to emotion. People express their emotions through text a lot nowadays, which has led the Emotion Recognition as an important research area. Extracting emotion is a very complicated task. This paper shows a new approach to detect emotion based on TFIDF, and it is a measure that reflects the value a word holds in a document. In this method, emotion is classified into six types. There are other researches on the simple distinction between positive and negative emotion, but this does not add much to understanding human emotion. Emotion is extracted from different sentences, and data representation is based on semantic structure. It generalizes each sentence into six major predefined emotion sets. The evaluation shows that this method is well accomplished to categorize a sentence into different emotion categories and with a reasonable accuracy rate.
机译:无数人口适应了不断发展的技术,包括文本沟通。用户广告或无意中分享情绪。正如我们所知,情绪是人类生活中最关键的方面之一;他们影响人类的行为,思考,行动令人信服,最重要的决策。我们已知许多所谓的情绪,每个都具有重要意义。在现代技术的这一时代,很难找到任何未开发的地区;这适用于情感。人们现在通过文本表达自己的情绪,这已经导致情感认可作为重要的研究区域。提取情绪是一个非常复杂的任务。本文显示了一种基于TFIDF检测情绪的新方法,它是一种措施,它反映了一个单词在文档中保持的值。在这种方法中,情绪被分为六种类型。对积极和负面情绪之间的简单区别有其他研究,但这并不是了解人类的情绪。情绪从不同的句子中提取,数据表示基于语义结构。它将每个句子概括为六个主要的预定义的情绪集。评估表明,这种方法很好地完成了对不同情感类别的句子和具有合理的准确率。

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