An omicron variant tweeter sentiment analysis using NLP technique

Sangamesh Hosgurmath , Vishwanath Petli , V.K. Jalihal
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引用次数: 3

Abstract

Twitter is a miniature writing for a blog site which gives phase to individuals to share as well as communicate their perspectives about point, activities, items plus other medicinal harms. Tweets can be arranged keen on assorted classes reliant on their significance through the tip looked. NLP for wellbeing linked exploration be at present utilize in combination of tweet keen on positive as well as negative classes reliant on their approach utilizing normal language handling strategy. This paper contain execution of NLP (Bag of words) for message alliance reliant on twitter omicron tweet informational catalog utilizing sentiment preparing information utilizing twitter statistics set as well as suggest a plan to further expand categorization. Utilization of Lemmatization alongside NLP can further expand accuracy of characterization of tweets, via bountiful encouragement, pessimism as well as impartiality score of vocabulary present in tweet. For genuine effecting of this structure python through NLP plus twitter informational compilation be used. In this paper we are concerning feelings exploration in twitter tweet for omicron datasets to arrange the survey of all consumers whether it is positive, negative or impartial.

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基于NLP技术的Omicron变体推特情绪分析
Twitter是一个微型的博客网站,它让个人可以分享和交流他们对观点、活动、物品和其他药物危害的看法。推文可以根据其重要性按照不同的类别进行排列。与健康相关的探索的NLP目前结合使用积极和消极的课程,这取决于他们使用正常语言处理策略的方法。本文利用twitter统计集的情感准备信息,对依赖于twitter omicron tweet信息目录的消息联盟进行了NLP (Bag of words)的执行,并提出了进一步扩大分类的计划。词汇化与NLP结合使用,通过对推文中词汇的慷慨鼓励、悲观和公正得分,可以进一步扩大推文表征的准确性。为了使这个结构真正有效,使用python通过NLP加twitter信息编译。本文针对omicron数据集在twitter tweet中的感受探索,安排对所有消费者的调查,无论是正面的、负面的还是公正的。
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