Sentiment Analysis On Twitter Data

S. Shweta, Kanade Ashwini, U. Rohini, K. Priyanka
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Abstract

Now-a-days Millions of people are sharing their views daily on micro blogging sites, it contains short and simple expressions. In this paper, we will discuss about a perspective to extract the sentiment from a Twitter, where users post their opinions for everything. we are going to concentrate on twitter, which is a micro blogging site. Many people tweet their feeling on twitter. In this project , we are going to analyze the tweets made by people. And determine their happiness. We are going to do sentiment analysis on this twitter data. These messages or tweets are classified as positive, negative or neutral with respect to a expression. This is very useful for the companies who want to know the feedback about their product brands or the customers who want to search the recommendation from others about product before purchase. We will use natural language toolkit processing algorithms for classifying the sentiment of Twitter messages We are going to make a web based UI application. Which will show the data and crawl through live feeds.
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对推特数据的情绪分析
如今,每天有数百万人在微博网站上分享他们的观点,微博包含简短而简单的表达。在本文中,我们将讨论从Twitter中提取情感的视角,用户在Twitter上发布他们对所有事情的意见。我们将专注于twitter,这是一个微博客网站。很多人在推特上表达自己的感受。在这个项目中,我们将分析人们发布的推文。并决定他们的幸福。我们将对这些推特数据进行情感分析。这些消息或推文根据表达分为积极、消极或中性。这是非常有用的公司谁想要知道对他们的产品品牌的反馈或客户谁想要搜索推荐从其他人购买前的产品。我们将使用自然语言工具箱处理算法对Twitter消息的情绪进行分类。我们将制作一个基于web的UI应用程序。它会显示数据并在实时feed中爬行。
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