使用朴素贝叶斯对推文进行实时情感分析

Ankur Goel, J. Gautam, Sitesh Kumar
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引用次数: 92

摘要

Twitter1是一个微博网站,它为人们提供了一个分享和表达他们对话题、事件、产品和其他服务的看法的平台。Tweets可以根据它们与搜索主题的相关性被划分为不同的类别。目前有各种各样的机器学习算法用于根据tweet的情绪将其分类为积极和消极类,例如Baseline,朴素贝叶斯分类器,支持向量机等。本文利用Twitter数据库的sentiment140训练数据实现了朴素贝叶斯算法,并提出了一种改进分类的方法。使用SentiWordNet和朴素贝叶斯可以提高推文分类的准确性,通过提供推文中存在的词的积极性,消极性和客观性评分。对于该系统的实际实现,使用了带有NLTK和python- twitter api的python。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real time sentiment analysis of tweets using Naive Bayes
Twitter1 is a micro-blogging website which provides platform for people to share and express their views about topics, happenings, products and other services. Tweets can be classified into different classes based on their relevance with the topic searched. Various Machine Learning algorithms are currently employed in classification of tweets into positive and negative classes based on their sentiments, such as Baseline, Naive Bayes Classifier, Support Vector Machine etc. This paper contains implementation of Naive Bayes using sentiment140 training data using Twitter database and propose a method to improve classification. Use of SentiWordNet along with Naive Bayes can improve accuracy of classification of tweets, by providing positivity, negativity and objectivity score of words present in tweets. For actual implementation of this system python with NLTK and python-Twitter APIs are used.
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