Machine Learning Techniques for Opinion Mining from Social Media

K. Victor Rajan, Freddy Frejus
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Abstract

Expressing emotions through various channels is part of human life. Directly or indirectly, we somehow reflect our opinions through speech, writings, etc., in our daily life. Opinions containing emotional or sentimental words have huge impact in the society. Analyzing the emotions and sentiments of people has its own importance. For example, we can measure the well being of a society, prevent suicides, and measure the degree of satisfaction of their customers by analyzing the comments or the feedback. The world wide web sites like social media, forums, review sites, and blogs generate a large volume of data in the form of opinion, emotion, and sentiment about social events, government policies, political events etc. Increased use of technology has made people proactively express their opinion through social media sites like Twitter, Facebook, and Instagram. Decision makers can make use of social media content to understand how people react to policies, events, and consumer products. But, social media analytics is a complex task due to the challenges in the natural language processing of social media language. These messages do not adhere to grammatical standards. The unstructured data from the social media needs to be cleansed and well-structured for opinion mining. These messages often reflect the opinion, emotion, and sentiment of the SCIREA Journal of Computer http://www.scirea.org/journal/Computer May 8, 2022 Volume 7, Issue 1, February 2022 https://doi.org/10.54647/computer52271
社交媒体意见挖掘的机器学习技术
通过各种渠道表达情感是人类生活的一部分。在日常生活中,我们通过言语、文字等直接或间接地反映出自己的观点。包含情感或感伤词语的意见在社会中具有巨大的影响。分析人们的情绪和情绪有其自身的重要性。例如,我们可以衡量一个社会的福祉,防止自杀,并通过分析评论或反馈来衡量客户的满意度。像社交媒体、论坛、评论网站和博客这样的万维网网站产生了大量关于社会事件、政府政策、政治事件等的意见、情感和情绪的数据。科技的日益普及使得人们通过Twitter、Facebook和Instagram等社交媒体网站主动表达自己的观点。决策者可以利用社交媒体内容来了解人们对政策、事件和消费品的反应。但是,由于社交媒体语言的自然语言处理的挑战,社交媒体分析是一项复杂的任务。这些信息不符合语法标准。来自社交媒体的非结构化数据需要进行清理和结构化,以便进行意见挖掘。这些信息通常反映了SCIREA计算机杂志http://www.scirea.org/journal/Computer 2022年5月8日第7卷第1期2022年2月https://doi.org/10.54647/computer52271的观点、情感和情绪
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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