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Supervised Sentiment Analysis on Amazon Product Reviews: A survey

机译:亚马逊产品评论的监督情绪分析:一项调查

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Sentiment Analysis (SA), which is also known as Opinion Mining, is a hot-fastest growing research area, making it challenging to follow all the activities in such areas. It intends to study people's thoughts, feelings, and attitudes about topics, events, issues, entities, individuals, and their attributes in social media (e.g., social networking sites, forums, blogs, etc.) expressed by either text reviews or comments. Amazon is an example of the world's largest online retailer that allows its customers to rate its products and freely write reviews. Analyzing these reviews into positive or negative; will assist customers' decision making, which varies from purchasing a product like a camera, mobile phone, etc., to writing a review about movies and making investments - all of these decisions will have a significant impact on the daily life. Sentiment analysis draws the attention of both scientific and market research in Natural Language Processing and Machine Learning fields. In general, the machine learning approach consists of supervised and unsupervised algorithms. In this research study, a detailed typical workflow process often adopted by the researchers is presented. Moreover, traditional supervised machine learning classification techniques have been investigated on various categories of Amazon product reviews to find the best method that provides a reliable result of sentiment analysis and assists future research in this newly emerging area.
机译:又称观察挖掘的情感分析(SA)是一个增长最快的研究区,使得遵循这些地区的所有活动挑战。它打算研究人们的思想,感受和态度,这些媒体,事件,问题,实体,个人以及由文本评论或意见表达的社交媒体(例如,社交网站,论坛,博客等)。亚马逊是世界上最大的在线零售商的一个例子,使其客户可以评价其产品并自由写评论。分析这些评论积极或消极;将协助客户的决策,这取决于购买相机,手机等的产品,以书写关于电影和投资的审查 - 所有这些决定将对日常生活产生重大影响。情感分析引起了自然语言处理和机器学习领域的科学和市场研究的注意。通常,机器学习方法包括监督和无监督的算法。在这项研究中,展示了研究人员经常采用的详细典型工作流程。此外,传统的监督机器学习分类技术已经在亚马逊产品评论中进行了调查,以找到最佳的方法,以提供可靠的情绪分析结果,并协助未来的新兴地区的研究。

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