基于产品评论数据的意见挖掘算法比较

S. Sultana, Sumaiya Rahman Eva, Nayeem Hasan Moon, Akinul Islam Jony, Dipannyta Nandi
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引用次数: 0

摘要

在2004年Web 2.0发布之后,用户在互联网上生成了大量的评论网站、在线论坛、在线博客和许多其他网站上的内容。整个用户生成的内容是大量用不同语言编写的无组织文本,包含用户对一个或多个实体的情感。预测分析主要是利用现有的数据来预测未来的结果。目前,大量的研究集中在意见挖掘领域,也称为情感分析、意见提取、评论分析、主观分析、情感分析和情绪提取。在感知主流数据的意义和模式时,它可以是一个最大的选择。大多数情况下,有各种算法可用于轮询。对于算法的有效性,研究者们的看法是矛盾的。我们比较了不同的意见挖掘算法,并给出了研究结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Opinion Mining Algorithms by Using Product Review Data
After release of Web 2.0 in 2004 user spawned contents on the internet eminently in abundant review sites, online forums, online blogs, and many other sites. Entire user generated contents are considerable bunches of unorganized text written in different languages that encompass user emotions about one or more entities. Mainly predictive analysis exerts the existing data to forecast future outcomes. Currently, a massive amount of researches are being engrossed in the area of opinion mining, also called sentiment analysis, opinion extraction, review analysis, subjective analysis, emotion analysis, and mood extraction. It can be an utmost choice whilst perceiving the meaning and patterns in prevailing data. Most of the time, there are various algorithms available to work with polling. There are contradictory opinions among researchers regarding the effectiveness of algorithms. We have compared different opinion mining algorithms and presented the findings in this paper.
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