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An efficient sentimental analysis using hybrid deep learning and optimization technique for Twitter using parts of speech (POS) tagging

机译:使用言论(POS)标记的旋转闭合杂交深度学习和优化技术的高效感伤分析

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摘要

The topic sentiment analysis is like a buzz word among researchers with the advancements in business and social network analysis. Sentiment analysis is the process of recognizing, grouping and classifying the sentiments or opinions conveyed over the social networks creating an immense measure of emotions with rich information as tweets, announcements, blog entries and more. Sentiment analysis considered to be an exceptionally valuable technique in artificial intelligence and is widely used for opinion mining and parts of speech (POS) tagging. Twitter is one among the social network with large number users expressing their thoughts or opinions in a precise and simple way. Analysis of Twitter data is complex compared to other social network data with the existence of slang words and incorrect spellings in a short sentence format. Twitter only permits a maximum of 280 characters per tweet. There were multiple approach such as knowledge based and Deep learning based approach for sentiment analysis using text data. POS is considered as one the required tools in natural language processing (NLP) and Deep learning applications. In this paper, we analyze the tweets of the individual person using hybrid deep learning (HDL) techniques. The proposed system preprocesses the input data before applying HDL techniques. Sentiment analysis in this research is applied using the five-point scale classification as highly negative, negative, neutral, positive and highly positive. The proposed work results in better accuracy and takes less time with a greater number of tweets in comparison with other extensively used models like Random forest, Naive Bayes, and decision tree classifiers. By analyzing various classifiers results in terms of accuracy and precision, ANN achieved 92% accuracy and 91.3% precision, its quite improved results than the other classifiers.
机译:主题情绪分析就像在研究人员中的嗡嗡声,具有业务和社会网络分析的进步。情绪分析是通过社交网络传达的情绪或意见来认识,分组和分类的过程,从而产生丰富的信息,作为推文,公告,博客参赛作品和更多的信息。情绪分析认为是人工智能中的一种异常有价值的技术,广泛用于意见采矿和言论(POS)标记的部分。 Twitter是社交网络中的一个,具有大量用户以精确和简单的方式表达他们的想法或意见。与其他社交网络数据相比,Twitter数据的分析与存在俚语的其他社交网络数据和短句格式不正确的拼写相比。 Twitter仅允许每次推文最多280个字符。使用文本数据具有多种方法,如基于知识和基于深度学习的情感分析方法。 POS被视为自然语言处理(NLP)和深度学习应用中所需的工具。在本文中,我们使用混合深度学习(HDL)技术分析各个人的推文。所提出的系统在应用HDL技术之前预处理输入数据。本研究中的情绪分析采用五点比例分类应用,作为高度负,负,中性,正且高度阳性。建议的工作与更好的准确性导致更好的准确性,并且与其他广泛使用的模型相比,与随机森林,天真贝叶斯和决策树分类器这样的其他广泛使用的模型相比,更少的推文。通过分析各种分类器的准确性和精确度,ANN实现了92%的精度和91.3%的精确度,其结果比其他分类器相当改善。

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