Gradify: Analysis of twitter account using classification algorithm

Gaur Gunjan, Bangad Naman, Jain Siddhi, Rana Manish, Kanchan Pranita
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Abstract

With technology's increasing capabilities, social media has become the largest pool of data from which it can extract public opinion and begin to gather informative data on the success or failure of a brand, product, or marketing campaign in the eyes of the public. People share their experiences, opinions, and daily activities on social media, which results in enormous amounts of online data that attract developers to carry out data mining and analysis. Thus, there is a necessity for social media screening to obtain results that can be used for analysis. Twitter is an online networking site driven by tweets, which are 140-character limited messages. Thus, the character limit enforces the use of hashtags for text classification. Currently, around 5500–6000, tweets are published every second, which results in approximately 561.6 million tweets per day. Performing sentiment analysis of tweets can help us to determine the polarity and inclination of a vast population toward a specific topic, term, or entity. The applications of such analysis can easily be observed during public elections, movie promotions, brand endorsements, and many other fields. This proposed system uses a Naïve Bayes classifier to determine the tweets based on sentiment. In the implemented system, tweets are collected, and sentiment analysis is performed on them. Based on the sentiment analysis results, a few suggestions can be provided to the user. The primary aim is to provide a method for analyzing sentiment scores based on grades. This paper reports on the design of sentiment analysis, extracting vast numbers of tweets. Results classify users' perceptions via tweets into positive and negative categories. Secondly, it discusses various techniques to carry out a sentiment analysis on Twitter data in detail.
gradient:使用分类算法对twitter账户进行分析
随着技术能力的不断增强,社交媒体已经成为最大的数据池,它可以从中提取民意,并开始收集公众眼中品牌,产品或营销活动的成功或失败的信息数据。人们在社交媒体上分享他们的经历、观点和日常活动,从而产生了大量的在线数据,吸引了开发人员进行数据挖掘和分析。因此,有必要对社交媒体进行筛选,以获得可用于分析的结果。Twitter是一个由tweet驱动的在线社交网站,tweet是140个字符的限制信息。因此,字符限制强制使用hashtag进行文本分类。目前,每秒大约有5500-6000条推文发布,每天大约有5.616亿条推文发布。对tweet进行情感分析可以帮助我们确定大量人群对特定主题、术语或实体的极性和倾向。这种分析的应用可以很容易地在公共选举、电影宣传、品牌代言和许多其他领域中观察到。该系统使用Naïve贝叶斯分类器根据情感来确定推文。在实现的系统中,收集推文并对其进行情感分析。基于情感分析结果,可以为用户提供一些建议。主要目的是提供一种基于分数分析情绪得分的方法。本文报道了情感分析的设计,提取了大量的推文。结果将用户通过推特的看法分为积极和消极两类。其次,详细讨论了对Twitter数据进行情感分析的各种技术。
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