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Knowledge Generation Using Sentiment Classification Involving Machine Learning on E-Commerce

机译:使用涉及电子商务的机器学习的情感分类的知识分类

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摘要

Sentiment analysis manages the computational treatment of conclusion, notion, and content subjectivity. In this article, three sentiment classes such as positive, negative and neutral emotions have been demonstrated by appropriate features from raw unstructured data followed by data preprocessing steps. Applying best in class social analytics methodology to examine the sentiments embedded with purchaser remarks, encourages both producer and individual customers. Machine learning methods such as Naïve Bayes, maximum entropy classification, Deep Neural Networks were used upon the data, extracted from some websites such as Samsung and Apple for sentiment classification. In the online business arena, the application of sentiment classification explores a great opportunity. The subsidy of such an investigation is that associations can apply the proposed social examination framework to exploit the entire social information on the web and therefore improve their proper blueprint promoting strategies corresponding business.
机译:情感分析管理结论,概念和内容主观性的计算处理。在本文中,通过原始数据的适当特征,随后是数据预处理步骤,已经证明了三个情感类别,例如正面,消极和中性情绪。采用最佳的课堂社交分析方法来检查带有购买者评论的情绪,鼓励生产者和个人客户。在数据上使用了机器学习方法,例如幼稚的贝叶斯,最大的熵分类,深神经网络,从三星和Apple等一些网站中提取以进行情感分类。在在线商业领域,情感分类的应用探索了一个绝佳的机会。这种调查的补贴在于,协会可以应用拟议的社会考试框架来利用网络上的整个社会信息,从而改善其适当的蓝图促进策略相应的业务。

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