情感分析算法:评价阿拉伯语和英语语言的表现

M. E. M. Abo, Nordiana Ahmad Kharman Shah, Vimala Balakrishnan, A. Abdelaziz
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引用次数: 17

摘要

近年来,Facebook、WhatsApp、Twitter和博客等社交媒体的使用量迅速增加。这些平台允许人们自由地撰写评论,分享他们的观点、想法和建议,这些评论可以是积极的、消极的或中立的,涉及政治、商业、广告和娱乐等各种话题。一些机器学习(ML)算法,如朴素贝叶斯(NB)和决策树(DT),与不同语言的情感分析技术一起使用,以理解社交媒体中人们的观点。在本文中,我们使用不同语言的多数据集评估和讨论了$NB$和$DT$在情感分析中的应用,以了解与$ML$算法一起使用时哪种算法可以提供更好的结果。实验收集了英语、现代标准汉语和方言汉语等多语言数据集。我们基于精度和运行时间这两个参数来评估。我们的实验结果显示了一些重要的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment analysis algorithms: evaluation performance of the Arabic and English language
Usage of social media like Facebook, WhatsApp, Twitter, and Blogs is rapidly increasing in recent years. These platforms allow people to freely write comments and share their opinions, ideas and suggestions that can be either positive, negative or neutral comments on various topics such as politics, business, advertisement, and entertainment. Several, Machine Learning $(ML)$ algorithms such as Naive Bayes $NB$ and Decision Tree $DT$ are used with sentiments analysis technique in different languages to understand the opinions of people in social media. In this paper, we evaluate and discussed the application of $NB$ and $DT$ in sentiment analysis using a multi-dataset in different languages to understand which can give a better result when used with $ML$ algorithms. Multi-language dataset such as English, modern standardArabic and dialectArabic are collected for the experiment. We evaluate is based on two parameters which are accuracy and runtime. The result of our experiment shows some significant.
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