An Effective Framework for design of Dataset Using Twitter

Monal R.Torney, Dr.K.H.Walse, Dr.V.M.Thakare
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Abstract

The rapid expansion of internet usage and related services like social media and blogs has increased people's level of expressiveness in day-to-day life. Social media platforms like Twitter and Facebook facilitate people to interact and exchange opinions about people, products, and services. As a result, a vast amount of data is available online in the form of views, tweets, messages, audio, and videos. An interface is needed to collect knowledge and insights from the various tweets, ideas, and comments. Thus we have proposed the Twitter API-based Interface, able to perform Hashtag searches and extract tweets from Twitter along with the ample number of fields related to the Twitter object. Using the interface, the 55 properties of each tweet are collected and used for further investigations. The python-based library called Tweepy is used to interact with the Twitter API. Due to the availability of real-worlddata, various issues related to text analysis can be addressed. The problems such as Sentiment Analysis, Opinion Mining, Implicit and Explicit detection, genuineness of views, and Opinion Spam detection can be addressed using the dataset availability.
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利用Twitter设计数据集的有效框架
互联网的使用以及社交媒体和博客等相关服务的迅速扩张,提高了人们在日常生活中的表达水平。像Twitter和Facebook这样的社交媒体平台促进了人们对人、产品和服务的互动和交换意见。因此,大量的数据以观点、推文、消息、音频和视频的形式出现在网上。需要一个界面来从各种tweet、想法和评论中收集知识和见解。因此,我们提出了基于Twitter api的接口,它能够执行Hashtag搜索并从Twitter中提取tweet以及与Twitter对象相关的大量字段。使用该界面,收集每条tweet的55个属性并用于进一步调查。基于python的名为Tweepy的库用于与Twitter API交互。由于真实世界数据的可用性,可以解决与文本分析相关的各种问题。利用数据集可用性可以解决情感分析、意见挖掘、隐式和显式检测、观点真实性和意见垃圾检测等问题。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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