Machine Learning Based Sentiment Analysis on Twitter Data

Khushboo Saglani
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引用次数: 4

Abstract

With the increase of social networking epoch and its growth, the net has become one in all the powerful platforms for online learning, exchanging ideas and sharing opinions. Social media contain an enormous amount of the info for sentiment analysis within the type of tweets, blogs, and updates on the status, posts, etc.This paper addresses the matter of sentiment analysis in twitter; that's classifying tweets in keeping with the sentiment into positive, negative or neutral. Analysing the emotions of the general public became important to seek out the reviews of the shoppers for any product within the market, predicting political elections and predicting socio economic phenomena like stock market. The aim of this project is to develop a functional classifier for accurate and automatic sentiment classification of an unknown tweet stream by using convolutional neural networks. IndexTerms – Twitter, Sentiment, Natural Language Processing, CNN.
基于机器学习的Twitter数据情感分析
随着社交网络时代的到来和发展,网络已经成为在线学习、交流思想和分享意见的强大平台之一。社交媒体包含了大量的情感分析信息,包括推文、博客、状态更新、帖子等。本文讨论了twitter中的情感分析问题;这就是根据情绪将推文分为积极、消极或中性。分析大众的情绪对于找出消费者对市场中任何产品的评价、预测政治选举和预测股市等社会经济现象变得非常重要。这个项目的目的是通过使用卷积神经网络开发一个功能分类器,对未知的tweet流进行准确和自动的情感分类。IndexTerms -推特,情感,自然语言处理,CNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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