A NATURAL LANGUAGE PROCESSING APPROACH TO DETERMINE THE POLARITY AND SUBJECTIVITY OF IPHONE 12 TWITTER FEEDS USING TEXTBLOB

B. Abubakar, C. Uppin
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引用次数: 1

Abstract

Sentiment analysis and opinion mining is a branch of computer science that has gained considerable growth over the last decade. This branch of computer science deals with determining the emotions, opinions, feelings amongst others of a person on a particular topic. Social media has become an outlet for people to voice out their thoughts and opinions publicly about various topics of discussion making it a great domain to apply sentiment analysis and opinion mining. Sentiment analysis and opinion mining employ Natural Language Processing (NLP) in order to fairly obtain the mood of a person’s opinion about any specific topic or product in the case of an ecommerce domain. It is a process involving automatic feature extractions by mode of notions of a person about service and it functions on a series of different expressions for a given topic based on some predefined features stored in a database of facts. In an ecommerce system, the process of analyzing the opinions of customers about products is vital for business growth and customer satisfaction. This proposed research will attempt to implement a model for sentiment analysis and opinion mining on Twitter feeds. In this paper, we address the issues of combining sentiment classification and the domain constraint analysis techniques for extracting opinions of the public from social media. The dataset that was employed in the paper was gotten from Twitter through the tweepy API. The TextBlob library was used for the analysis of the tweets to determine their sentiments. The result shows that more tweets were having a positive subjectivity and polarity on the subject matter.
使用textblob的自然语言处理方法来确定iPhone 12 twitter feed的极性和主观性
情感分析和意见挖掘是计算机科学的一个分支,在过去十年中获得了相当大的发展。这是计算机科学的一个分支,研究确定一个人在特定话题上的情绪、观点和感受。社交媒体已经成为人们就各种讨论话题公开表达自己想法和观点的渠道,这使得它成为应用情感分析和意见挖掘的绝佳领域。情感分析和意见挖掘采用自然语言处理(NLP),以便在电子商务领域公平地获得人们对任何特定主题或产品的意见。它是一个基于人对服务的概念模式自动提取特征的过程,它基于存储在事实数据库中的一些预定义特征,对给定主题进行一系列不同的表达。在电子商务系统中,分析客户对产品的意见的过程对业务增长和客户满意度至关重要。本研究将尝试在Twitter feed上实现情感分析和意见挖掘模型。在本文中,我们解决了结合情感分类和领域约束分析技术从社交媒体中提取公众意见的问题。论文中使用的数据集是通过tweepy API从Twitter获得的。TextBlob库用于分析tweet以确定其情绪。结果表明,更多的推文在主题上具有积极的主观性和极性。
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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