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Textual Dissection of Live Twitter Reviews using Naive Bayes

机译:使用朴素贝叶斯的实时Twitter评论的文本剖析

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Textual dissection can be a very useful aspect for the extraction of useful information from text documents. The ideology of textual dissection is the way people think about a particular text. It is the process where given reviews are classified as positive or negative. A huge amount of data (reviews) is present on the web which can be analyzed to make it useful. It can prove to be useful specifically for marketing, business, polity as it allow us to do easy analysis of the subject under consideration. In today’s era of internet, lots and lots of people can connect with each other. Internet has made it possible for us to connect and find out the opinions dissection. Internet has provided a lot of platform through which opinions from different people can be taken through Forums, Blogs, and Social networking sites. This paper proposes the use of Tweepy and TextBlob as a python library to access and classify Tweets using Na?ve Bayes, a Machine Learning technique. Our Technique is meant to ease out the process of analysis, summarization and classification.
机译:文本解剖可能是从文本文档中提取有用信息的一个非常有用的方面。文本解剖的意识形态是人们思考特定文本的方式。在此过程中,给定评论被分为正面或负面。 Web上存在大量数据(评论),可以对其进行分析以使其有用。它可以证明对营销,商业,政体特别有用,因为它使我们可以轻松地分析正在考虑的主题。在当今的互联网时代,很多人可以互相联系。互联网使我们能够联系并找出观点剖析成为可能。互联网提供了很多平台,通过这些平台可以通过论坛,博客和社交网站获得来自不同人的意见。本文提出使用Tweepy和TextBlob作为python库使用机器学习技术Naveve Bayes来访问和分类推文。我们的技术旨在简化分析,总结和分类的过程。

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