Investigation of Different Machine Learning Algorithms to Determine Human Sentiment Using Twitter Data

G. Mostafa, Ikhtiar Ahmed, M. Junayed
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引用次数: 9

Abstract

In recent years, with the advancement of the internet, social media is a promising platform to explore what going on around the world, sharing opinions and personal development. Now, Sentiment analysis, also known as text mining is widely used in the data science sector. It is an analysis of textual data that describes subjective information available in the source and allows an organization to identify the thoughts and feelings of their brand or goods or services while monitoring conversations and reviews online. Sentiment analysis of Twitter data is a very popular research work nowadays. Twitter is that kind of social media where many users express their opinion and feelings through small tweets and different machine learning classifier algorithms can be used to analyze those tweets. In this paper, some selected machine learning classifier algorithms were applied on crawled Twitter data after applying different types of preprocessors and encoding techniques, which ended up with satisfying accuracy. Later a comparison between the achieved accuracies was showed. Experimental evaluations show that the Neural Network Classifier’ algorithm provides a remarkable accuracy of 81.33% compared with other classifiers.
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利用Twitter数据确定人类情感的不同机器学习算法的研究
近年来,随着互联网的进步,社交媒体是一个很有前途的平台,可以探索世界各地正在发生的事情,分享观点和个人发展。现在,情感分析,也被称为文本挖掘,被广泛应用于数据科学领域。它是对文本数据的分析,描述了来源中可用的主观信息,并允许组织在监控在线对话和评论的同时识别其品牌或商品或服务的想法和感受。Twitter数据的情感分析是目前非常流行的一项研究工作。Twitter是一种社交媒体,许多用户通过微博来表达自己的观点和感受,可以使用不同的机器学习分类算法来分析这些微博。本文选择了一些机器学习分类器算法,在应用不同类型的预处理器和编码技术后,对抓取的Twitter数据进行了应用,得到了令人满意的准确率。随后,给出了所获得的精度之间的比较。实验评估表明,与其他分类器相比,神经网络分类器算法的准确率达到了81.33%。
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