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The Essential of Sentiment Analysis and Opinion Mining in Social Media : Introduction and Survey of the Recent Approaches and Techniques

机译:社交媒体中情感分析与意见挖掘的基本:近期方法和技术的介绍与调查

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With evolution of social network and Web 2.0, people not only consume content by downloading on web but also contribute and produce new contents. People became more eager to express and share their opinions on web regarding daily activities as well as local or global issues. Due to the proliferation of social media for instance Facebook, Twitter, Youtube and others, sentiment analysis and opinion mining grow rapidly. It branches out from the field of natural language processing and data mining particularly from web mining and text mining. Why sentiment analysis and also known as opinion mining is prevalent and relevant nowadays? When we try to decide to purchase a product, we are likely to get the opinions from friends or relatives and do some surveys before we purchase the product. Hence, opinions are undeniably the key influencer of our behavior as well as the central to nearly all of the activities. Within the opinions, we often find the neutral, positive and negative polarities in the sentences. Based on the sentiment analysis taxonomy, it has opinion mining to have the opinion polarity classification, subjectivity detection, opinion spam detection, opinion summarization and argument expression detection. On the other hand, emotion mining has the emotion polarity classification, emotion detection, emotion cause detection and emotion classification. If it is based on granularity level, it has sentence level, document level and aspect/entity level of sentiment analysis. As for the machine learning approaches, it has semi-supervised learning, unsupervised learning and supervised learning of sentiment analysis.
机译:随着社交网络和Web 2.0的演变,人们不仅可以通过在Web上下载而且贡献并产生新内容。人们更加渴望表达并分享他们关于日常活动以及本地或全球问题的意见。由于Facebook,Twitter,YouTube等的社交媒体的扩散,情感分析和意见挖掘迅速增长。它从自然语言处理和数据挖掘领域分支出来,特别是从网上采矿和文本挖掘。为什么情感分析和又称意见采矿是普遍的,现在相关?当我们尝试决定购买产品时,我们可能会从朋友或亲戚那里获得意见,并在购买产品之前进行一些调查。因此,无疑的意见是我们行为的关键影响因素以及几乎所有活动的核心。在意见中,我们经常在句子中找到中性,积极和负极的极性。基于思想分析分类,它有意见采矿,具有意见极性分类,主观性检测,意见垃圾邮件检测,意见摘要和参数表达检测。另一方面,情感挖掘具有情感极性分类,情感检测,情绪导致检测和情感分类。如果它基于粒度级别,它具有句子级,文档级别和方面/实体级别的情感分析。至于机器学习方法,它具有半监督学习,无监督的学习和监督情绪分析。

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